Data mining Books
Nova Science Publishers Inc Data Mining: Principles, Applications & Emerging
Book Synopsis
£127.99
De Gruyter Data structures based on linear relations
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£44.25
De Gruyter Systems Performance Modeling
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£81.75
De Gruyter Data structures based on non-linear relations and
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£44.25
De Gruyter Software Source Code: Statistical Modeling
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£51.75
De Gruyter Machine Learning under Resource Constraints -
Book SynopsisMachine Learning under Resource Constraints addresses novel machine learning algorithms that are challenged by high-throughput data, by high dimensions, or by complex structures of the data in three volumes. Resource constraints are given by the relation between the demands for processing the data and the capacity of the computing machinery. The resources are runtime, memory, communication, and energy. Hence, modern computer architectures play a significant role. Novel machine learning algorithms are optimized with regard to minimal resource consumption. Moreover, learned predictions are executed on diverse architectures to save resources. It provides a comprehensive overview of the novel approaches to machine learning research that consider resource constraints, as well as the application of the described methods in various domains of science and engineering. Volume 2 covers machine learning for knowledge discovery in particle and astroparticle physics. Their instruments, e.g., particle detectors or telescopes, gather petabytes of data. Here, machine learning is necessary not only to process the vast amounts of data and to detect the relevant examples efficiently, but also as part of the knowledge discovery process itself. The physical knowledge is encoded in simulations that are used to train the machine learning models. At the same time, the interpretation of the learned models serves to expand the physical knowledge. This results in a cycle of theory enhancement supported by machine learning.
£77.62
BPB Publications Self-Service Analytics with Power BI: Learn how
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£26.59
Springer Text Mining Predictive Methods for Analyzing Unstructured Information
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£123.49
£14.20
Springer Optimization Based Data Mining Theory and Applications Advanced Information and Knowledge Processing
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£132.28
Springer DemandDriven Associative Classification
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£53.17
Lulu Press Data Preparation and Exploration
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£19.00
Cambridge University Press A HandsOn Introduction to Data Science with Python
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£99.99
Apress Pro Data Backup and Recovery Experts Voice in Data Management
Table of Contents Introduction to Backup and Recovery Backup Software Physical Backup Media Virtual Backup Media New Media Technologies Software Architectures: CommVault Software Architectures: NetBackup Application Backup Strategies Putting It All Together: Sample Backup Environments Monitoring and Reporting Summary
£49.99
Springer GraphBased Clustering and Data Visualization Algorithms
Book SynopsisThis work presents a data visualization technique that combines graph-based topology representation and dimensionality reduction methods to visualize the intrinsic data structure in a low-dimensional vector space.Table of ContentsVector Quantisation and Topology-Based Graph RepresentationGraph-Based Clustering AlgorithmsGraph-Based Visualisation of High-Dimensional Data
£54.99
ASQ Quality Press Root Cause Analysis: The Core of Problem Solving
Book SynopsisThis bestseller can help anyone whose role is to try to find specific causes for failures.It provides detailed steps for solving problems, focusing more heavily on the analytical process involved in finding the actual causes of problems. It does this using figures, diagrams, and tools useful for helping to make our thinking visible. This increases our ability to see what is truly significant and to better identify errors in our thinking. In the sections on finding root causes, this second edition now includes more examples on the use of multi-vari charts; how thought experiments can help guide data interpretation; how to enhance the value of the data collection process; cautions for analyzing data; and what to do if one can''t find the causes. In its guidance on solution identification, biomimicry and TRIZ have been added as potential solution identification techniques. In addition, the appendices have been revised to include: an expanded breakdown of the 7 M''s, which includes more than 50 specific possible causes; forms for tracking causes and solutions, which can help maintain alignment of actions; techniques for how to enhance the interview process; and example responses to problem situations that the reader can analyze for appropriateness.
£54.00
£30.95
ISTE Ltd and John Wiley & Sons Inc Co-Clustering: Models, Algorithms and Applications
Book SynopsisCluster or co-cluster analyses are important tools in a variety of scientific areas. The introduction of this book presents a state of the art of already well-established, as well as more recent methods of co-clustering. The authors mainly deal with the two-mode partitioning under different approaches, but pay particular attention to a probabilistic approach. Chapter 1 concerns clustering in general and the model-based clustering in particular. The authors briefly review the classical clustering methods and focus on the mixture model. They present and discuss the use of different mixtures adapted to different types of data. The algorithms used are described and related works with different classical methods are presented and commented upon. This chapter is useful in tackling the problem of co-clustering under the mixture approach. Chapter 2 is devoted to the latent block model proposed in the mixture approach context. The authors discuss this model in detail and present its interest regarding co-clustering. Various algorithms are presented in a general context. Chapter 3 focuses on binary and categorical data. It presents, in detail, the appropriated latent block mixture models. Variants of these models and algorithms are presented and illustrated using examples. Chapter 4 focuses on contingency data. Mutual information, phi-squared and model-based co-clustering are studied. Models, algorithms and connections among different approaches are described and illustrated. Chapter 5 presents the case of continuous data. In the same way, the different approaches used in the previous chapters are extended to this situation. Contents 1. Cluster Analysis. 2. Model-Based Co-Clustering. 3. Co-Clustering of Binary and Categorical Data. 4. Co-Clustering of Contingency Tables. 5. Co-Clustering of Continuous Data. About the Authors Gérard Govaert is Professor at the University of Technology of Compiègne, France. He is also a member of the CNRS Laboratory Heudiasyc (Heuristic and diagnostic of complex systems). His research interests include latent structure modeling, model selection, model-based cluster analysis, block clustering and statistical pattern recognition. He is one of the authors of the MIXMOD (MIXtureMODelling) software. Mohamed Nadif is Professor at the University of Paris-Descartes, France, where he is a member of LIPADE (Paris Descartes computer science laboratory) in the Mathematics and Computer Science department. His research interests include machine learning, data mining, model-based cluster analysis, co-clustering, factorization and data analysis. Cluster Analysis is an important tool in a variety of scientific areas. Chapter 1 briefly presents a state of the art of already well-established as well more recent methods. The hierarchical, partitioning and fuzzy approaches will be discussed amongst others. The authors review the difficulty of these classical methods in tackling the high dimensionality, sparsity and scalability. Chapter 2 discusses the interests of coclustering, presenting different approaches and defining a co-cluster. The authors focus on co-clustering as a simultaneous clustering and discuss the cases of binary, continuous and co-occurrence data. The criteria and algorithms are described and illustrated on simulated and real data. Chapter 3 considers co-clustering as a model-based co-clustering. A latent block model is defined for different kinds of data. The estimation of parameters and co-clustering is tackled under two approaches: maximum likelihood and classification maximum likelihood. Hard and soft algorithms are described and applied on simulated and real data. Chapter 4 considers co-clustering as a matrix approximation. The trifactorization approach is considered and algorithms based on update rules are described. Links with numerical and probabilistic approaches are established. A combination of algorithms are proposed and evaluated on simulated and real data. Chapter 5 considers a co-clustering or bi-clustering as the search for coherent co-clusters in biological terms or the extraction of co-clusters under conditions. Classical algorithms will be described and evaluated on simulated and real data. Different indices to evaluate the quality of coclusters are noted and used in numerical experiments.Table of ContentsAcknowledgment xi Introduction xiii I.1. Types and representation of data xiii I.1.1. Binary data xiv I.1.2. Categorical data xiv I.1.3. Continuous data xv I.1.4. Contingency table xvii I.1.5. Data representations xix I.2. Simultaneous analysis xx I.2.1. Data analysis xx I.2.2. Co-clustering xxii I.2.3. Applications xxiii I.3. Notation xxvii I.4. Different approaches xxviii I.4.1. Two-mode partitioning xxviii I.4.2. Two-mode hierarchical clustering xxxvii I.4.3. Direct or block clustering xxxix I.4.4. Biclustering xxxix I.4.5. Other structures and other aims xliv I.5. Model-based co-clustering xlvi I.6. Outline xlix Chapter 1. Cluster Analysis 1 1.1. Introduction 1 1.2. Miscellaneous clustering methods 4 1.2.1. Hierarchical approach 4 1.2.2. The k-means algorithm 5 1.2.3. Other approaches 7 1.3. Model-based clustering and the mixture model 11 1.4. EM algorithm 15 1.4.1. Complete data and complete-data likelihood 16 1.4.2. Principle 17 1.4.3. Application to mixture models 18 1.4.4. Properties 19 1.4.5. EM: an alternating optimization algorithm 19 1.5. Clustering and the mixture model 20 1.5.1. The two approaches 20 1.5.2. Classification likelihood 21 1.5.3. The CEM algorithm 22 1.5.4. Comparison of the two approaches 22 1.5.5. Fuzzy clustering 24 1.6. Gaussian mixture model 26 1.6.1. The model 26 1.6.2. CEM algorithm 28 1.6.3. Spherical form, identical proportions and volumes 29 1.6.4. Spherical form, identical proportions but differing volumes 30 1.6.5. Identical covariance matrices and proportions 31 1.7. Binary data 32 1.7.1. Binary mixture model 32 1.7.2. Parsimonious model 33 1.7.3. Examples of application 35 1.8. Categorical variables 36 1.8.1. Multinomial mixture model 36 1.8.2. Parsimonious model 38 1.9. Contingency tables 41 1.9.1. MNDKI2 algorithm 41 1.9.2. Model-based approach 43 1.9.3. Illustration 47 1.10. Implementation 49 1.10.1. Choice of model and of the number of classes 51 1.10.2. Strategies for use 51 1.10.3. Extension to particular situations 52 1.11. Conclusion 53 Chapter 2. Model-Based Co-Clustering 55 2.1. Metric approach 55 2.2. Probabilistic models 57 2.3. Latent block model 59 2.3.1. Definition 59 2.3.2. Link with the mixture model 61 2.3.3. Log-likelihoods 62 2.3.4. A complex model 63 2.4. Maximum likelihood estimation and algorithms 67 2.4.1. Variational EM approach 69 2.4.2. Classification EM approach 72 2.4.3. Stochastic EM-Gibbs approach 73 2.5. Bayesian approach 75 2.6. Conclusion and miscellaneous developments 76 Chapter 3. Co-Clustering of Binary and Categorical Data 79 3.1. Example and notation 80 3.2. Metric approach 82 3.3. Bernoulli latent block model and algorithms 84 3.3.1. The model 84 3.3.2. Model identifiability 85 3.3.3. Binary LBVEM and LBCEM algorithms 86 3.4. Parsimonious Bernoulli LBMs 90 3.5. Categorical data 91 3.6. Bayesian inference 93 3.7. Model selection 96 3.7.1. The integrated completed log-likelihood (ICL) 96 3.7.2. Penalized information criteria 97 3.8. Illustrative experiments 98 3.8.1. Townships 98 3.8.2. Mero 101 3.9. Conclusion 105 Chapter 4. Co-Clustering of Contingency Tables 107 4.1. Measures of association 108 4.1.1. Phi-squared coefficient 109 4.1.2. Mutual information 111 4.2. Contingency table associated with a couple of partitions 113 4.2.1. Associated distributions 113 4.2.2. Associated measures of association 116 4.3. Co-clustering of contingency table 119 4.3.1. Two equivalent approaches 119 4.3.2. Parameter modification of criteria 121 4.3.3. Co-clustering with the phi-squared coefficient 124 4.3.4. Co-clustering with the mutual information 129 4.4. Model-based co-clustering 131 4.4.1. Block model for contingency tables 133 4.4.2. Poisson latent block model 137 4.4.3. Poisson LBVEM and LBCEM algorithms 138 4.5. Comparison of all algorithms 140 4.5.1. CROKI2 versus CROINFO 142 4.5.2. CROINFO versus Poisson LBCEM 142 4.5.3. Poisson LBVEM versus Poisson LBCEM 144 4.5.4. Behavior of CROKI2, CROINFO, LBCEM and LBVEM 147 4.6. Conclusion 149 Chapter 5. Co-Clustering of Continuous Data 151 5.1. Metric approach 152 5.1.1. Measure of information 153 5.1.2. Summarized data associated with partitions 153 5.1.3. Objective function 156 5.1.4. CROEUC algorithm 157 5.2. Gaussian latent block model 159 5.2.1. The model 159 5.2.2. Gaussian LBVEM and LBCEM algorithms 160 5.2.3. Parsimonious Gaussian latent block models 161 5.3. Illustrative example 163 5.4. Gaussian block mixture model 168 5.4.1. The model 169 5.4.2. GBEM algorithm 170 5.5. Numerical experiments 173 5.5.1. GBEM versus CROEUC and EM 174 5.5.2. Effect of the size of data 175 5.6. Conclusion 175 Bibliography 177 Index 199
£132.00
International Institute of Business Analysis Guide to Business Data Analytics
£63.74
£18.02
Springer Nature Switzerland AG Mathematical Theories of Machine Learning - Theory and Applications
Book SynopsisThis book studies mathematical theories of machine learning. The first part of the book explores the optimality and adaptivity of choosing step sizes of gradient descent for escaping strict saddle points in non-convex optimization problems. In the second part, the authors propose algorithms to find local minima in nonconvex optimization and to obtain global minima in some degree from the Newton Second Law without friction. In the third part, the authors study the problem of subspace clustering with noisy and missing data, which is a problem well-motivated by practical applications data subject to stochastic Gaussian noise and/or incomplete data with uniformly missing entries. In the last part, the authors introduce an novel VAR model with Elastic-Net regularization and its equivalent Bayesian model allowing for both a stable sparsity and a group selection. Trade Review“The book discusses mathematical theories of machine learning. … The book is very technically written and it is addressed to professionals in the field.” (Smaranda Belciug, zbMATH 1422.68003, 2019)Table of ContentsChapter 1. Introduction.- Chapter 2. General Framework of Mathematics.- Chapter 3. Problem Formulation.- Chapter 4. Development of Novel Techniques of CoCoSSC Method.- Chapter 5. Further Discussions of the Proposed Method.- Chapter 6. Related Work on Geometry of Non-Convex Programs.- Chapter 7. Gradient Descent Converges to Minimizers.- Chapter 8. A Conservation Law Method Based on Optimization.- Chapter 9. Improved Sample Complexity in Sparse Subspace Clustering with Noisy and Missing Observations.- Chapter 10. Online Discovery for Stable and Grouping Causalities in Multi-Variate Time Series.- Chapter 11. Conclusion.
£71.24
Springer Nature Switzerland AG Advances in Intelligent Data Analysis XVIII: 18th International Symposium on Intelligent Data Analysis, IDA 2020, Konstanz, Germany, April 27–29, 2020, Proceedings
Book SynopsisThis open access book constitutes the proceedings of the 18th International Conference on Intelligent Data Analysis, IDA 2020, held in Konstanz, Germany, in April 2020. The 45 full papers presented in this volume were carefully reviewed and selected from 114 submissions. Advancing Intelligent Data Analysis requires novel, potentially game-changing ideas. IDA’s mission is to promote ideas over performance: a solid motivation can be as convincing as exhaustive empirical evaluation.Table of ContentsMultivariate Time Series as Images: Imputation Using Convolutional Denoising Autoencoder.- Dual Sequential Variational Autoencoders for Fraud Detection.- A Principled Approach to Analyze Expressiveness and Accuracy of Graph Neural Networks.- Efficient Batch-Incremental Classification Using UMAP for Evolving Data Streams.- GraphMDL: Graph Pattern Selection Based on Minimum Description Length.- Towards Content Sensitivity Analysis.- Gibbs Sampling Subjectively Interesting Tiles.- Even Faster Exact k-Means Clustering.- Ising-Based Consensus Clustering on Special Purpose Hardware.- Transfer Learning by Learning Projections from Target to Source.- Computing Vertex-Vertex Dissimilarities Using Random Trees: Application to Clustering in Graphs.- Towards Evaluation of CNN Performance in Semantically Meaningful Latent Spaces.- Vouw: Geometric Pattern Mining Using the MDL Principle.- A Consensus Approach to Improve NMF Document Clustering.- Discriminative Bias for Learning Probabilistic Sentential Decision Diagrams.- Widening for MDL-Based Retail Signature Discovery.- Addressing the Resolution Limit and the Field of View Limit in Community Mining.- Estimating Uncertainty in Deep Learning for Reporting Confidence: An Application on Cell Type Prediction in Testes Based on Proteomics.- Adversarial Attacks Hidden in Plain Sight.- Enriched Weisfeiler-Lehman Kernel for Improved Graph Clustering of Source Code.- Overlapping Hierarchical Clustering (OHC).- Digital Footprints of International Migration on Twitter.- Percolation-Based Detection of Anomalous Subgraphs in Complex Networks.- A Late-Fusion Approach to Community Detection in Attributed Networks.- Reconciling Predictions in the Regression Setting: an Application to Bus Travel Time Prediction.- A Distribution Dependent and Independent Complexity Analysis of Manifold Regularization.- Actionable Subgroup Discovery and Urban Farm Optimization.- AVATAR - Machine Learning Pipeline Evaluation Using Surrogate Model.- Detection of Derivative Discontinuities in Observational Data.- Improving Prediction with Causal Probabilistic Variables.- DO-U-Net for Segmentation and Counting.- Enhanced Word Embeddings for Anorexia Nervosa Detection on Social Media.- Event Recognition Based on Classification of Generated Image Captions.- Human-to-AI Coach: Improving Human Inputs to AI Systems.- Aleatoric and Epistemic Uncertainty with Random Forests.- Master your Metrics with Calibration.- Supervised Phrase-Boundary Embeddings.- Predicting Remaining Useful Life with Similarity-Based Priors.- Orometric Methods in Bounded Metric Data.- Interpretable Neuron Structuring with Graph Spectral Regularization.- Comparing the Preservation of Network Properties by Graph Embeddings.- Making Learners (More) Monotone.- Combining Machine Learning and Simulation to a Hybrid Modelling Approach.- LiBRe: Label-Wise Selection of Base Learners in Binary Relevance for Multi-Label Classification.- Angle-Based Crowding Degree Estimation for Many-Objective Optimization.
£34.99
Springer Nature Switzerland AG Visual Analytics for Data Scientists
Book SynopsisThis textbook presents the main principles of visual analytics and describes techniques and approaches that have proven their utility and can be readily reproduced. Special emphasis is placed on various instructive examples of analyses, in which the need for and the use of visualisations are explained in detail.The book begins by introducing the main ideas and concepts of visual analytics and explaining why it should be considered an essential part of data science methodology and practices. It then describes the general principles underlying the visual analytics approaches, including those on appropriate visual representation, the use of interactive techniques, and classes of computational methods. It continues with discussing how to use visualisations for getting aware of data properties that need to be taken into account and for detecting possible data quality issues that may impair the analysis. The second part of the book describes visual analytics methods and workflows, organised by various data types including multidimensional data, data with spatial and temporal components, data describing binary relationships, texts, images and video. For each data type, the specific properties and issues are explained, the relevant analysis tasks are discussed, and appropriate methods and procedures are introduced. The focus here is not on the micro-level details of how the methods work, but on how the methods can be used and how they can be applied to data. The limitations of the methods are also discussed and possible pitfalls are identified.The textbook is intended for students in data science and, more generally, anyone doing or planning to do practical data analysis. It includes numerous examples demonstrating how visual analytics techniques are used and how they can help analysts to understand the properties of data, gain insights into the subject reflected in the data, and build good models that can be trusted. Based on several years of teaching related courses at the City, University of London, the University of Bonn and TU Munich, as well as industry training at the Fraunhofer Institute IAIS and numerous summer schools, the main content is complemented by sample datasets and detailed, illustrated descriptions of exercises to practice applying visual analytics methods and workflows.Table of ContentsPart I: Introduction to Visual Analytics in Data Science.- 1. Introduction to Visual Analytics by an Example.- 2. General Concepts.- 3. Principles of Interactive Visualisation.- 4. Computational Techniques in Visual Analytics.- Part II: Visual Analytics along the Data Science Workflow.- 5. Visual Analytics for Investigating and Processing Data.- 6. Visual Analytics for Understanding Multiple Attributes.- 7. Visual Analytics for Understanding Relationships between Entities.- 8. Visual Analytics for Understanding Temporal Distributions and Variations.- 9. Visual Analytics for Understanding Spatial Distributions and Spatial Variation.- 10. Visual Analytics for Understanding Phenomena in Space and Time.- 11. Visual Analytics for Understanding Texts.- 12. Visual Analytics for Understanding Images and Video.- 13. Computational Modelling with Visual Analytics.- 14. Conclusion.
£54.99
Springer Nature Switzerland AG Similarity Search and Applications: 13th International Conference, SISAP 2020, Copenhagen, Denmark, September 30 – October 2, 2020, Proceedings
Book SynopsisThis book constitutes the refereed proceedings of the 13th International Conference on Similarity Search and Applications, SISAP 2020, held in Copenhagen, Denmark, in September/October 2020. The conference was held virtually due to the COVID-19 pandemic.The 19 full papers presented together with 12 short and 2 doctoral symposium papers were carefully reviewed and selected from 50 submissions. The papers are organized in topical sections named: scalable similarity search; similarity measures, search, and indexing; high-dimensional data and intrinsic dimensionality; clustering; artificial intelligence and similarity; demo and position papers; and doctoral symposium.Table of ContentsScalable Similarity Search.- Accelerating Metric Filtering by Improving Bounds on Estimated Distances.- Differentially Private Sketches for Jaccard Similarity Estimation.- Pivot Selection for Narrow Sketches by Optimization Algorithms.- mmLSH: A Practical and Efficient Technique for Processing Approximate Nearest Neighbor Queries on Multimedia Data.- Parallelizing Filter-Verification based Exact Set Similarity Joins on Multicores.- Similarity Search with Tensor Core Units.- On the Problem of p1 in Locality-Sensitive Hashing.- Similarity Measures, Search, and Indexing.- Confirmation Sampling for Exact Nearest Neighbor Search.- Optimal Metric Search Is Equivalent to the Minimum Dominating Set Problem.- Metrics and Ambits and Sprawls, Oh My: Another Tutorial on Metric Indexing.- Some branches may bear rotten fruits: Diversity browsing VP-Trees.- Continuous Similarity Search for Evolving Database.- Taking advantage of highly-correlated attributes in similarity queries with missing values.- Similarity Between Points in Metric Measure Spaces.- High-dimensional Data and Intrinsic Dimensionality.- GTT: Guiding the Tensor Train Decomposition.- Noise Adaptive Tensor Train Decomposition for Low-Rank Embedding of Noisy Data.- ABID: Angle Based Intrinsic Dimensionality.- Sampled Angles in High-Dimensional Spaces.- Local Intrinsic Dimensionality III: Density and Similarity.- Analysing Indexability of Intrinsically High-dimensional Data using TriGen.- Reverse k-Nearest Neighbors Centrality Measures and Local Intrinsic Dimension.- Clustering.- BETULA: Numerically Stable CF-Trees for BIRCH Clustering.- Using a Set of Triangle Inequalities to Accelerate K-means Clustering.- Angle-Based Clustering.- Artificial Intelligence and Similarity.- Improving Locality Sensitive Hashing by Efficiently Finding Projected Nearest Neighbors.- SIR: Similar Image Retrieval for Product Search in E-Commerce.- Cross-Resolution deep features based Image Search.- Learning Distance Estimators from Pivoted Embeddings of Metric Objects.- Demo and Position Papers.- Visualizer of Dataset Similarity using Knowledge Graph.- vitrivr-explore: Guided Multimedia Collection Exploration for Ad-hoc Video Search.- Running experiments with confidence and sanity.- Doctoral Symposium.- Temporal Similarity of Trajectories in Graphs.- Relational Visual-Textual Information Retrieval.
£71.24
Springer Nature Switzerland AG Data-Driven Mining, Learning and Analytics for
Book SynopsisThis book provides information on data-driven infrastructure design, analytical approaches, and technological solutions with case studies for smart cities. This book aims to attract works on multidisciplinary research spanning across the computer science and engineering, environmental studies, services, urban planning and development, social sciences and industrial engineering on technologies, case studies, novel approaches, and visionary ideas related to data-driven innovative solutions and big data-powered applications to cope with the real world challenges for building smart cities.Table of Contents1. Smart City Ecosystem – An Introduction.- 2. Datafication for secured smart cities.- 3. Secured big data infrastructure services.- 4. Intelligent infrastructure of secured smart cities.- 5. Cyber-physical systems for secured smart cities.- 6. Blockchain for smart cities.- 7. Context-aware security and privacy of smart cities.- 7. Privacy and social Issues in smart cities.- 8. Sensor and RFID applications of smart cities.- 9. Advanced data mining for secured smart cities.- 10. Big data for secured smart cities.- 11. Data analytics tools and technologies for smart cities.- 12. Machine learning and AI for secured smart cities.
£85.49
Springer Nature Switzerland AG Process Mining Workshops: ICPM 2020 International Workshops, Padua, Italy, October 5–8, 2020, Revised Selected Papers
Book SynopsisThis book constitutes revised selected papers from the International Workshops held at the Second International Conference on Process Mining, ICPM 2020, which took place during October 4-9, 2020. The conference was planned to take place in Padua, Italy, but had to be held online due to the COVID-19 pandemic.The conference focuses on the area of process mining research and practice, including theory, algorithmic challenges, and applications. The co-located workshops provided a forum for novel research ideas. The 29 papers included in this volume were carefully reviewed and selected from 59 submissions. They stem from the following workshops: 1st International Workshop on Event Data and Behavioral Analytics (EDBA) 1st International Workshop on Leveraging Machine Learning in Process Mining (ML4PM) 1st International Workshop on Streaming Analytics for Process Mining (SA4PM'20) 5th International Workshop on Process Querying, Manipulation, and Intelligence (PQMI) 3rd International Workshop on Process-Oriented Data Science for Healthcare (PODS4H) 1st International Workshop on Trust and Privacy in Process Analytics (TPPA) Table of Contents1st International Workshop on Event Data and Behavioral Analytics (EDBA).- Visually Representing History Dependencies in Event Logs.- Analysis of Business Process Batching using Causal Event Models.- Process Procespecting to Improve Renewable Energy Interconnection Queues: A Case Study.- Automated Discovery of Process Models with True Concurrency and Inclusive Choices.- A Novel Approach to Discover Switch Behaviours in Process Mining.- Process Model Discovery from Sensor Event Data.- Unsupervised Event Abstraction in a Process Mining Context: A Benchmark Study.- 1st International Workshop on Leveraging Machine Learning in Process Mining (ML4PM).- Predicting Remaining Cycle Time from Ongoing Cases: A Survival Analysis-based Approach.- Time Matters:Time-Aware LSTMs for Predictive Business Process Monitoring.- A preliminary study on the application of Reinforcement Learning for Predictive Process Monitoring.- An Alignment Cost-Based Classi cation of Log Traces Using Machine-Learning.- Improving the Extraction of Process Annotations from Text with Inter-Sentence Analysis.- Case2vec: Advances in Representation Learning for Business Processes.- Supervised Conformance Checking using Recurrent Neural Network Classifiers.- 1st International Workshop on Streaming Analytics for Process Mining (SA4PM'20).- Online Anomaly Detection Using Statistical Leverage for Streaming Business Process Events.- Concept Drift Detection on Streaming Data with Dynamic Outlier Aggregation.- OTOSO: Online Trace Ordering for Structural Overviews.- Performance Skyline: Inferring Process Performance Models from Interval Events.- 5th International Workshop on Process Querying, Manipulation, and Intelligence (PQMI 2020).- Alignment Approximation for Process Trees.- Stochastic Process Discovery By Weight Estimation.- Graph-based Process Mining.- Third International Workshop on Process-Oriented Data Science for Healthcare (PODS4H).- A Process Mining approach to statistical analysis: application to a real-world advanced melanoma dataset.- Process Mining of Disease Trajectories in MIMIC-III: A Case Study.- The Need for Interactive Data-Driven Process Simulation in Healthcare: A Case Study.- Process mining on the extended event log to analyse the system usage during healthcare processes (Case study: the GP Tab usage during chemotherapy treatments).- Process Mining on FHIR - An Open Standards-Based Process Analytics Suite for Healthcare.- Deriving a sophisticated clinical pathway based on patient conditions from electronic health record data.- Exploration on How Global Warming Affects Emergency Services.- 1st Workshop on Trust and Privacy in Process Analytics (TPPA).- Towards Quantifying Privacy in Process Mining.
£64.99
Springer Nature Switzerland AG Text Mining for Information Professionals: An Uncharted Territory
Book SynopsisThis book focuses on a basic theoretical framework dealing with the problems, solutions, and applications of text mining and its various facets in a very practical form of case studies, use cases, and stories. The book contains 11 chapters with 14 case studies showing 8 different text mining and visualization approaches, and 17 stories. In addition, both a website and a Github account are also maintained for the book. They contain the code, data, and notebooks for the case studies; a summary of all the stories shared by the librarians/faculty; and hyperlinks to open an interactive virtual RStudio/Jupyter Notebook environment. The interactive virtual environment runs case studies based on the R programming language for hands-on practice in the cloud without installing any software. From understanding different types and forms of data to case studies showing the application of each text mining approaches on data retrieved from various resources, this book is a must-read for all library professionals interested in text mining and its application in libraries. Additionally, this book will also be helpful to archivists, digital curators, or any other humanities and social science professionals who want to understand the basic theory behind text data, text mining, and various tools and techniques available to solve and visualize their research problems. Table of Contents1. The Computational Library.- 2. Text Data and Where to Find Them?.- 3. Text Pre-Processing.- 4. Topic Modeling.- 5. Network Text Analysis.- 6. Burst Detection.- 7. Sentiment Analysis.- 8. Predictive Modeling.- 9. Information Visualization.- 10. Tools and Techniques for Text Mining and Visualization.- 11. Text Data and Mining Ethics.
£64.99
Springer Nature Switzerland AG Belief Functions: Theory and Applications: 6th International Conference, BELIEF 2021, Shanghai, China, October 15–19, 2021, Proceedings
Book SynopsisThis book constitutes the refereed proceedings of the 6th International Conference on Belief Functions, BELIEF 2021, held in Shanghai, China, in October 2021. The 30 full papers presented in this book were carefully selected and reviewed from 37 submissions. The papers cover a wide range on theoretical aspects on mathematical foundations, statistical inference as well as on applications in various areas including classification, clustering, data fusion, image processing, and much more.Table of ContentsClustering.- Transfer learning.- Classification.- Statistical inference and learning.- Deep learning.- Conflict, inconsistency and specificity.- Information fusion.- Elicitation.- Algorithms and computation.
£54.99
Springer Nature Switzerland AG Advanced Data Mining and Applications: 17th
Book SynopsisThis book constitutes the proceedings of the 17th International Conference on Advanced Data Mining and Applications, ADMA 2021, held in Sydney, Australia in February 2022.*The 26 full papers presented together with 35 short papers were carefully reviewed and selected from 116 submissions. The papers were organized in topical sections in Part II named: Pattern mining; Graph mining; Text mining; Multimedia and time series data mining; and Classification, clustering and recommendation. * The conference was originally planned for December 2021, but was postponed to 2022.
£64.99
Springer-Verlag Berlin and Heidelberg GmbH & Co. KG Deskriptives Data-Mining
Book SynopsisDieses Buch bietet einen Überblick über Data-Mining-Methoden, die durch Software veranschaulicht werden. Beim Wissensmanagement geht es um die Anwendung von menschlichem Wissen (Erkenntnistheorie) mit den technologischen Fortschritten unserer heutigen Gesellschaft (Computersysteme) und Big Data, sowohl bei der Datenerfassung als auch bei der Datenanalyse. Es gibt drei Arten von Analyseinstrumenten. Die deskriptive Analyse konzentriert sich auf Berichte über das, was passiert ist. Bei der prädiktiven Analyse werden statistische und/oder künstliche Intelligenz eingesetzt, um Vorhersagen treffen zu können. Dazu gehört auch die Modellierung von Klassifizierungen. Die diagnostische Analytik kann die Analyse von Sensoreingaben anwenden, um Kontrollsysteme automatisch zu steuern. Die präskriptive Analytik wendet quantitative Modelle an, um Systeme zu optimieren oder zumindest verbesserte Systeme zu identifizieren. Data Mining umfasst deskriptive und prädiktive Modellierung. Operations Research umfasst alle drei Bereiche. Dieses Buch konzentriert sich auf die deskriptive Analytik.Das Buch versucht, einfache Erklärungen und Demonstrationen einiger deskriptiver Werkzeuge zu liefern. Es bietet Beispiele für die Auswirkungen von Big Data und erweitert die Abdeckung von Assoziationsregeln und Clusteranalysen. Kapitel 1 gibt einen Überblick im Kontext des Wissensmanagements. Kapitel 2 erörtert einige grundlegende Softwareunterstützung für die Datenvisualisierung. Kapitel 3 befasst sich mit den Grundlagen der Warenkorbanalyse, und Kapitel 4 demonstriert die RFM-Modellierung, ein grundlegendes Marketing-Data-Mining-Tool. Kapitel 5 demonstriert das Assoziationsregel-Mining. Kapitel 6 befasst sich eingehender mit der Clusteranalyse. Kapitel 7 befasst sich mit der Link-Analyse. Die Modelle werden anhand geschäftsbezogener Daten demonstriert. Der Stil des Buches ist beschreibend und versucht zu erklären, wie die Methoden funktionieren, mit einigen Zitaten, aber ohne tiefgehende wissenschaftliche Referenzen. Die Datensätze und die Software wurden so ausgewählt, dass sie für jeden Leser, der über einen Computeranschluss verfügt, weithin verfügbar und zugänglich sind.Table of Contents
£66.49
£59.99
Springer Privacy in Statistical Databases
Book SynopsisPrivacy models and concepts.- Microdata protection.- Statistical table protection.- Synthetic data generation methods.- Synthetic data generation software.- Disclosure risk assessment.- Spatial and georeferenced data.- Machine learning and privacy.- Case studies.
£64.99
Springer Intelligent Data Engineering and Automated Learning IDEAL 2024
Book Synopsis.- Quantitative Estimation of Reputation Risk..- Dissecting Data Practices in Android Apps: A Comparative Study of Data Collection and Sharing Behaviors..- Model-Based Meta-Reinforcement Learning for Hyperparameter Optimization..- Towards Sustainable Precision: Machine Learning for Laser Micromachining Optimization..- Association Rules Mining with Auto-Encoders..- Using Contrastive Learning to Map Stylistic Similarities in Narrative Writers..- Automatic classification of signal and noise in functional magnetic resonance imaging scans using convolutional neural networks..- How Resilient are Language Models to Text Perturbations?..- Emotional Sequential Influence Modeling on False Information..- CSSDH: An Ontology for Social Determinants of Health to Operational Continuity of Care Data Interoperability..- Padel two-dimensional tracking extraction from monocular video recordings..- Drowsiness Detection Using Vital Sign Sensors and Deep Learning on Smartwatches..- Benchmarking out of the box Open-Source LLMs for Malware Detection based on API Calls sequences..- Multimodal Visio-lingual Content Analysis to Detect Fake Content on Reddit..- MetaLIRS: Meta-learning for Imputation and Regression Selection..- Pipeline for Semantic Segmentation of Large Railway Point Clouds..- Preliminary Investigation on Machine Learning and Deep Learning Models for Change of Direction Classification in Running..- Efficient Radar Scheduling Using Genetic Algorithms and Stochastic Heuristic Initialization..- Towards a Communication Specification Language for Heterogeneous Service Orchestration based on Process Calculus and Holonic Multi-agent Systems..- Counterfactual Explanations for Sustainable Tourism Indicators..- Tracking Healthy Organs in Medical Scans to Improve Cancer Treatment by Using UW-Madison GI Tract Image Segmentation..- Low consumption models for disease diagnosis in isolated farms..- Fast and Scalable Recommendation Retrieval Model with Mixed Attention and Knowledge Distillation..- Federated Learning for Vietnamese SMS Spam Detection using Pre-Trained PhoBERT..- Deep Learning Inference on Edge: A Preliminary Device Comparison..- Causal Explanation of Graph Neural Networks..- The contribution of social sciences driven user studies to the development of human-centered artificial intelligence..- Towards Reliable Drift Detection and Explanation in Text Data..- Using Diffusion Models for Data Augmentation on Limited Rodent OCT Datasets..- Employing Explainable AI techniques for Air Pollution: An ante-hoc and post-hoc approach in dioxide nitrogen forecasting..- Predicting employee attrition in a multi-company setting..- A deep-learning approach for the identification of new subtypes of lung cancer ..- Loss Function Role in Processing Sequences with Heavy-Tailed Distributions..- Cooperative-Competitive Decision-Making in Resource Management: A Reinforcement Learning Perspective..- Improving Speech Emotion Recognition: Novel Aggregation Strategies for Self-Supervised Features..- Refining Multiple Instance Learning with Attention Regularization for Whole Slide Image Classification..- Evaluating performance and trustworthiness of RAG systems for generating administrative text..- Blueprint of Tomorrow: Contrasting Off-line and On-line Drawing Tasks for Alzheimer's Disease Screening..- Digital Mental Health Apps: Key Features and User Engagement for Better Wellness..- Automatic PDF Document Classification with Machine Learning..- Contributions on Mixtures of Polynomials for Hybrid Bayesian Networks..- Age-unbiased Facial Emotion Recognition with Regularizing Self-attention Value Vector..- Assessing the Impact of Temporal Data Aggregation on the Reliability of Predictive Machine Learning Models..- Topic modeling in Telegram channels during the Russia-Ukraine conflict..- Structural and Semantic Data Layers in Time Series Analyses.
£66.49
Springer Intelligent Data Engineering and Automated Learning IDEAL 2024
Book Synopsis.- A Divide-and-Conquer Approach for Container License Plate Detection Using Multi-Frame Analysis..- Smart Sign Language Decoder..- Hotel's Price Prediction Based on Country Specific Data..- New Approach to Support the Breast Cancer Diagnosis Process Using Frequent Pattern Growth and Stacking Based on Machine Learning Techniques..- An Ontology-Lexicon-Driven Approach for Refining Sentiment Analysis Processes..- Characterising Class Imbalance in Transportation Mode Detection: An Experimental Study..- LeakG3PD: a Python generator and simulated Water Distribution System dataset..- Providing Informative Feedback in a Low-Cost Rehabilitation System using Machine Learning..- Noise tolerance and robustness ranking in Machine Learning models..- A supervised clustering approach to detect similar soccer players..- Three-Part Genetic Algorithm to Optimize the Outbound Train Loading Process Using a Multiple Travelling Salesman Problem Approach..- Using Data Augmentation For Improving Text Summarization..- Special Session on Predictive and Prescriptive Models for Smart Cities' Applications..- Sustainable demand-responsive transportation: A case study in rural Guimarães..- CLARA: Semi-Automatic Retraining System..- A grid-based approach for ambulance dispatch in critical emergencies within static systems.Optimizing vehicle coordination at multi-lane intersections using traffic control algorithms..- Optimizing Pedestrian Paths to Minimize Exposure to Urban Pollution Through Traffic Data Analysis..- Optimizing UCO Container Placement in Urb. Envs: A GA Approach..- Special Session on Computational intelligence on Renewable Energies and Sustainable Automation..- Data analysis and anomaly detection in a wind farm with k-Nearest Neighbors..- Development of a Database for Convolutional Neural Networks Simulating CFD Analysis..- Special Session on Example-based Explainable Artificial Intelligence.Entity Examples for Explainable Query Target Type Identification with LLMs..Near Hit and Near Miss Example Explanations for Model Revision in Binary Image Classification.- Special Session on Explainability and Fairness in Decision Support..- Evaluative Customized Naïve Associative Classifier: promoting equity in AI for the selection and promotion of human resources.Clustering of Serious Game Traces using Formal Concept Analysis.LORE4GroupRS: Explaining group recommendations supported by a local rule-based approach..- Special Session on Federated Learning, Intelligent Fusion and Applications (FLIFA).- Comparing MAE and RMSE as fitness of Genetic Algorithm for optimizing Echo State Network hyperparameters with different probabilistic distributions..- Federated Learning with Discriminative Naive Bayes Classifier..- Advances in Home Care and Real-Time Vital Signs Monitoring..- Exploring Data Symbion EI deep learning and model sharing modules..- A New Dataset for Analyzing Battery Failures in Wheelchairs..- A Methodology for Automated Conversion of Axis-Aligned to Polygonal and Oriented Bounding Box Annotations in Aerial Imagery Object Detection..- Multi-Layered Asynchronous Consensus-based Federated Learning (MACoL)..- .- Comparative study of Federated Learning algorithms based on SPADE agents..- Robotic Precision Fitness: Accurate Pose Training for Elderly Rehabilitation..- Special Session on Quantum Computing for Machine Learning and Optimization (Q4ML-Opt)..- Hybrid Quantum Solvers in Production: how to succeed in the NISQ era?..- QUBO Optimization of Electrical Grid Topologies..-Special Session on Anomaly Detection with Machine Learning..- Indecision-aware Deep Active Anomaly Detection..- Special Session on Developing AI Curricula for Pre-University Education..- Educational management as an ensure of high-quality standards, focused on the added value of a public university..- Identification of Areas for Improvement in Digital Pedagogical Competencies through Information Technologies, Communication, and Artificial Intelligence: An Innovative Approach in Teacher Training..- What Students Should Learn and Teachers Must Know about Artificial Intelligence..- Simplification of Image Segmentation and Object Detection Teaching Materials..- Educational Computer Vision Materials for Classification and Tracking of Objects..- Starting point in the introduction of AI in VET: Analysis and proposals in Spain..- Advancing Robotics Education: Integrating Large Language Models for Natural Language .- Programming in VET..- A Comprehensive Digital Solution for Identifying and Addressing Academic Risk in .- Middle Education..- Special Session on Data Selection in Machine Learning (6th Edition)..- Data Mining In Credit Card Approval: Feature Importance as a Comparison..- Special Session on Computational Intelligence for Imbalanced Classification..- 2D Convolutional Neural Networks for Alzheimer's Disease Classification from Brain MRI.
£66.49
Springer Big Data and Artificial Intelligence
£64.99
Springer Process Mining Workshops
Book Synopsis.- 9th International Workshop on Process Querying, Manipulation, and Intelligence (PQMI 2024).- An LLM-based Q&A Natural Language Interface to Process Mining..- One Language to Rule them All: Behavioural Querying of Process Data using SQL..- EVErPREP: Towards an Event Knowledge Graph enhanced Workflow Model for Event Log Preparation..- Representative Sampling in Process Mining: Two Novel Sampling Algorithms for Event Logs..- Root Cause Analysis Using Rule Mining on Object-Centric Event Logs..- The Jensen-Shannon Distance Metric for Stochastic Conformance Checking..- A Dynamic Programming Approach for Alignments on Process Trees..- 3rd International Workshop on Education meets Process Mining (EduPM 2024)..- Constructive Alignment in Process Mining..- Understanding Student Behavior using Active Window Tracking and Process Mining..- Measuring Skill Acquisition and Retention: A Case Study of Math Fluency..- Assessing the impact of exam preparation process on students' careers..- Evaluation of Study Plans using Partial Orders..- 3rd International Workshop on COllaboration MINing for Distributed Systems (COMINDS 2024)..- Towards Standardized Modeling of Collaboration Processes in Collaboration Process Discovery..- Revealing One-to-Many Event Relationships in Event Knowledge Graphs..- 5th International Workshop on Leveraging Machine learning in Process Mining (ML4PM 2024)..- On the Impact of Low-Quality Activity Labels in Predictive Process Monitoring..- Towards Accurate Predictions in ITSM: A Study on Transformer-Based Predictive Process Monitoring..- Predictions in Predictive Process Monitoring with Previously Unseen Categorical Values..- Differentially Private Event Logs with Case Attributes..- CaLenDiR: Mitigating Case-Length Distortion in Deep-Learning-Based Predictive Process Monitoring..- CC-HIT: Creating Counterfactuals from High-Impact Transitions..- Multivariate Approaches for Process Model Forecasting..- Enhancing Predictive Process Monitoring using semantic information..- 5th International Workshop on Event Data & Behavioral Analytics (EdbA 2024)..- A Classification of Data Quality Issues in Object-Centric Event Data..- Analyzing the Evolution of Boards in Collaborative Work Management Tools..- Extending Process Intelligence with Quantity-related Process Mining..- Ranking the Top-K Realizations of Stochastically Known Event Logs..- Framework for Extracting Real-World Object-Centric Event Logs from Game Data..- Object-Centric Local Process Models..- Locally Optimized Process Tree Discovery..- A Framework for Advanced Case Notions in Object-Centric Process Mining..- 7th International Workshop on Process-Oriented Data Science for Healthcare (PODS4H 2024)..- Predicting Unplanned Hospital Readmissions using Outcome-Oriented Predictive Process Mining (Research Paper)..- Structural and semantic enrichment of models for the interactive discovery of clinical processes..- Research Paper: Enhancing Healthcare Decision-Making with Analogy-Based Reasoning..- Analysing Disease Trajectories of Multimorbidity through Process Mining Techniques: A Case Study..- Predictive Insights for Personalising Esophagogastric Cancer Treatment Process - A Case Study..- Case Study: Insights on Prostate Cancer Treatment Pathways using Process Discovery..- 1st International Workshop on Empirical Research in Process Mining (ERPM 2024)..- A Taxonomy for Conformance Checking Visualizations..- Structuring Empirical Research on Process Mining at the Individual Level using the Theory of Effective Use..- Improving Business Processes through Hybrid Simulation Model: A Case Study..- Leveraging Process Mining on the Shop Floor: An Exploratory Study..- Using Facial Expressions to Predict Process Mining Task Performance..- Using Process Mining with Pre- and Post-Intervention Analysis to Improve Digital Service Delivery: A Governmental Case Study..- Towards an Ethogram of Exploratory Process Mining Behavior..- 1st International Workshop on Generative Artificial Intelligence for Process Mining (GenAI4PM 2024)..- Local Large Language Models for Business Process Modeling..- PM-LLM-Benchmark: Evaluating Large Language Models on Process Mining Tasks..- Terpsichora: a tool to generate synthetic MP-Declare process models..- Process Modeler vs. Chatbot: Is Generative AI Taking Over Process Modeling?..- Skill Learning Using Process Mining for Large Language Model Plan Generation..- Providing domain knowledge for process mining with ReWOO-based agents..- International Workshop on Stream Management & Analytics for Process Mining (SMA4PM 2024)..- Detect & Conquer: Template-Based Analysis of Processes using Complex Event Processing..- Task-Free Continual Learning with Dynamic Loss for Online Next Activity Prediction..- 1st International Workshop on Process Mining for Sustainability (PM4S 2024)..- Process Mining Guidelines for Greenhouse Gas Emission Management in Production Processes..- Sustainability Analysis Patterns for Process Mining and Process Modelling Approaches..- Towards Nudging in BPM: A Human-Centric Approach for Sustainable Business Processes..- Extending Genetic Process Discovery to Reveal Unfairness in Processes..- Can We Leverage Process Data from ERP Systems for Business Process Sustainability Analyses?..- 9th International Workshop on Process Querying, Manipulation, and Intelligence (PQMI 2024).- An LLM-based Q&A Natural Language Interface to Process Mining..- One Language to Rule them All: Behavioural Querying of Process Data using SQL..- EVErPREP: Towards an Event Knowledge Graph enhanced Workflow Model for Event Log Preparation..- Representative Sampling in Process Mining: Two Novel Sampling Algorithms for Event Logs..- Root Cause Analysis Using Rule Mining on Object-Centric Event Logs..- The Jensen-Shannon Distance Metric for Stochastic Conformance Checking..- A Dynamic Programming Approach for Alignments on Process Trees..- 3rd International Workshop on Education meets Process Mining (EduPM 2024)..- Constructive Alignment in Process Mining..- Understanding Student Behavior using Active Window Tracking and Process Mining..- Measuring Skill Acquisition and Retention: A Case Study of Math Fluency..- Assessing the impact of exam preparation process on students' careers..- Evaluation of Study Plans using Partial Orders..- 3rd International Workshop on COllaboration MINing for Distributed Systems (COMINDS 2024)..- Towards Standardized Modeling of Collaboration Processes in Collaboration Process Discovery..- Revealing One-to-Many Event Relationships in Event Knowledge Graphs..- 5th International Workshop on Leveraging Machine learning in Process Mining (ML4PM 2024)..- On the Impact of Low-Quality Activity Labels in Predictive Process Monitoring..- Towards Accurate Predictions in ITSM: A Study on Transformer-Based Predictive Process Monitoring..- Predictions in Predictive Process Monitoring with Previously Unseen Categorical Values..- Differentially Private Event Logs with Case Attributes..- CaLenDiR: Mitigating Case-Length Distortion in Deep-Learning-Based Predictive Process Monitoring..- CC-HIT: Creating Counterfactuals from High-Impact Transitions..- Multivariate Approaches for Process Model Forecasting..- Enhancing Predictive Process Monitoring using semantic information..- 5th International Workshop on Event Data & Behavioral Analytics (EdbA 2024)..- A Classification of Data Quality Issues in Object-Centric Event Data..- Analyzing the Evolution of Boards in Collaborative Work Management Tools..- Extending Process Intelligence with Quantity-related Process Mining..- Ranking the Top-K Realizations of Stochastically Known Event Logs..- Framework for Extracting Real-World Object-Centric Event Logs from Game Data..- Object-Centric Local Process Models..- Locally Optimized Process Tree Discovery..- A Framework for Advanced Case Notions in Object-Centric Process Mining..- 7th International Workshop on Process-Oriented Data Science for Healthcare (PODS4H 2024)..- Predicting Unplanned Hospital Readmissions using Outcome-Oriented Predictive Process Mining (Research Paper)..- Structural and semantic enrichment of models for the interactive discovery of clinical processes..- Research Paper: Enhancing Healthcare Decision-Making with Analogy-Based Reasoning..- Analysing Disease Trajectories of Multimorbidity through Process Mining Techniques: A Case Study..- Predictive Insights for Personalising Esophagogastric Cancer Treatment Process - A Case Study..- Case Study: Insights on Prostate Cancer Treatment Pathways using Process Discovery..- 1st International Workshop on Empirical Research in Process Mining (ERPM 2024)..- A Taxonomy for Conformance Checking Visualizations..- Structuring Empirical Research on Process Mining at the Individual Level using the Theory of Effective Use..- Improving Business Processes through Hybrid Simulation Model: A Case Study..- Leveraging Process Mining on the Shop Floor: An Exploratory Study..- Using Facial Expressions to Predict Process Mining Task Performance..- Using Process Mining with Pre- and Post-Intervention Analysis to Improve Digital Service Delivery: A Governmental Case Study..-&nb
£34.99
Springer Database Engineered Applications
£59.99
Springer ICT Innovations 2024. TechConvergence AI Business and Startup Synergy
Book Synopsis.- Session 1..- Evaluation of vector databases and LLMs in RAG-based multi-document question answering..- Aligning Food Ingredients with Multiple Semantic Resources..- Crossword Generation as a Constraint Satisfaction Problem Using Parallel Processing and Lemmatization..- Session 2..- Comprehensive Examination Of Network Access, Logging, And Auditing Strategies In Public And Private Institutions: Safeguarding Information Security, Resilience, And Compliance In The Digital Era..- Benefits of parallelization in CPU rendering: Quantitative analysis using a custom 3d rendering engine..- Simulation of the Quasigroup Redundancy Check Code’s Ability to Detect Errors..- Session 3..- YOLOv8 Oriented Bounding Box (OBB) Model for Waymo Open Dataset..- Deep Multimodal Fusion for Semantic Segmentation of Remote Sensing Earth Observation Data..- Transfer Learning with Yolo for Object Detection in Remote Sensing..- Comparison of On-Board and Off-Board processing power consumption for Drone camera images..- Classification of some Cosmological Images using Deep Learning and Persistent Homology..- Session 4..- Mushroom Classification Using Machine Learning..- Towards a framework for promoting student engagement to maximize learning in higher education: A case study..- Session 5..- Blood Oxygen Saturation Estimation Using PPG Signals from the MIMIC-III database..- Novel Methodology for the Pharmacological Mechanisms of Cannabis sativa and Alzheimer’s Disease Through Signaling Pathway Analysis Using Bioinformatics Tools..- Session 6, 7..- AI Cardiologist: Arrhythmia Detection by Transformer-based Language Model..- Ambient Assisted Living Sensor-Based Solution for Elderly Self-Monitoring..- Classification of Autism and Typical Development children based on EEG signals..- NATO Workshop..- Detecting the Unseen: Exploiting Radar-Sonar Sensor Fusion For Visual Detection of Low-Profile Naval Drones..- Evaluating Killer Drone Defense: NATO SPS Project ”Anti-Drones” Field Trials..- STEM Workshop..- Academic Career and Gender Balance Perception of Bachelor Students in Computer Science: A Case Study.
£64.99
Springer Analysis of Images Social Networks and Texts
Book Synopsis.- Keynote and Invited Papers..- KyrgyzNLP: Challenges, Progress, and Future..- Modeling Information Influence and Control in Social Networks: Integrating Opinions, Trust, Reputation, and Agent Dynamics..- Natural Language Processing..- Graphical Abbreviation Disclosure in Russian Language..- Iterative Improvement of an Additively Regularized Topic Model..- Key Algorithms for Keyphrase Generation: Instruction-Based LLMs for Russian Scientific Keyphrases..- Shrink the longest: improving latent space isotropy with simplicial geometry..- Redefining Annotation Practices: Leveraging Large Language Models for Discourse Annotation..- GERA: a corpus of Russian school texts annotated for Grammatical Error Correction..- From Tokens to Tales: Semantic Similarity in Story Generation..- Cross-Language Summarization in Russian and Chinese Using the Reinforcement Learning..- Computer Vision..- Temporal Modeling via TCN and Transformer for Audio-Visual Emotion Recognition..- YOLO-HTR: Page-Level Recognition of Historical Handwritten Document Collections..- Data Analysis and Machine Learning..- An optimal set of implications in triadic contexts..- Uniting contrastive and generative learning for event sequences models..- Theoretical Machine Learning and Optimization..- An asymptotically optimal algorithm for the minimum weight spanning tree with arbitrarily bounded diameter on random inputs..- Automatic Adaptive Conformal Inference for Time Series Forecasting.
£141.55
Springer Applied Computational Intelligence Informatics and Big Data
Book SynopsisIntelligent Computing and Big Data Modeling.- A New Power System Prediction Model Based on Expert System.- Application of Big Data Technology in Time-Frequency Data Management and Diagnosis.- Improving Generalization for Missing Data Imputation Via Dual Corruption Denoising Autoencoders.- Remote Intelligent Inspection Method of Man-Machine Interactive Computer Room Based on Digital Twin Technology.- Analysis of College Students’ Achievement Based on Data Mining.- Bridge Structure Health Assessment Algorithm Based on Heterogeneous Sensor Data Fusion Simulation.- The Volatility Prediction and Option Pricing Model of Correction Bias.- Attention-based Link Prediction with Contextualized Self-Supervision.- Intelligent System Design and Information Processing.- Lightweight MES System Research and Practice –A Medium-sized Discrete Manufacturing Enterprise as An Example.- A Genetic Deep Reinforcement Learning Approach with Prioritized Experience Replay Strategy to Solve the Influence Maximization Problem on Networks.- Continual Knowledge Graph Embedding by Structural Feature Distillation.- TZRT-RPC: A Hybrid Multi-OS Real-Time Communication Scheme Based on TrustZone.- Product Feature and Emotional Polarity Identification Method Based on ABSA Technology.- Development of an Intelligent Inspection and Analysis System for Special Equipment Report Sampling.- Cultural Digital Assets in the Metaverse.- Statistical Research of Medieval Phonology in Dunhuang Dialect.- A Runtime Design of WebAssembly Container for Embedded Real-time Operating Systems.- GraphModo: An Easy-to-Use Visual Construction System of Deep Learning Model.
£75.99
Springer Bisociative LiteratureBased Discovery
Book Synopsis1. Introduction.- 2. History, Resources and Tools.- 3. Background Technologies.- 4. Benchmark Data and Reusable Python Code.- 5. Text Mining for Closed Discovery.- 6. Outlier-based Closed Discovery.- 7. Semantic and Outlier-based Open Discovery.- 8. Network-based Closed Discovery.- 9. Embedding-based Closed Discovery.- 10. Research Trends and Lessons Learned.
£132.99
Springer Computational Intelligence in Data Science
Book Synopsis.- Computer Vision for Real World Applications..- AgriGuardNet: A Unified Approach to Plant Disease and Pest Detection..- Advanced Plant Disease and Pest Detection for Sustainable Agriculture..- Design of a unified framework for Automatic Detection of FOD (Foreign Object Debris) in Airport Runways..- A Low-Cost Vision-Based Framework for Autonomous Driving Using YOLO, MiDaS, and Stereo Vision..- A Secure System to Detect Animal Intrusion and Notify Users in a Farmland..- The Synergy of Federated Learning and IoT: Pioneering Privacy and Efficiency in Decentralised Systems..- Multi-Class Diagnosis of Ocular Diseases in Fundus Images using Fine-Tuned EfficientNetV2B3 Model with Self-Attention..- SMARTSPICEVISION: Revolutionizing Spice Authentication for Enhanced Detection, Grading, and Quality Control..- Deep Learning-Based Comparative Analysis for Endometriosis Classification..- Kidney Stone Detection in CT Scans: A Hybrid Approach with Machine Learning and Deep Learning..- Efficient Yoga Pose Classification Using Deep Neural Networks..- AI-Driven Multi-modal Story Generator by Integrating Image Understanding with Creative Narrative Generation Using Gemini and OpenAI APIs..- CureFinder - A Smart Health Care Aide for Predictive Analysis of Disease..- Eyesight: Integrative AI For Non-Invasive Diabetic Retinopathy Detection Using Pupillometry and Ensemble Deep Learning..- Topple-Net: A Modified U-Net Architecture for Classification of Diseased Tomato and Apple Leaves in Uncontrolled Environments..- Revolutionizing Seed Plant Classification: CNN Approaches For Enhanced Accuracy..- Emerging Trends in AI for Speech and Text..- Multiactivity Agent Using LLM For YouTubers..- Speech to Text Recognition by Machine Learning..- Hope Speech Detection and Classification Using Machine Learning and Deep Learning Techniques..- AI to conquer Stage fright..- Voice Unlocked: Transforming Speech Therapy for Special Children with VR and Gesture Animation..- Deep Learning Enhanced Suicidal Detection in Social Media..- Predicting Diseases from Symptoms Using Machine Learning Models and Open AI..- Transforming Lives: AIoT-Driven Deep Learning for Real- Time Speech Assistance for the Ophthalmologically Impaired..- Integrating A-LSTM with XGBoost for Improved Crop Price Prediction..- Experimenting AI-Driven Haiku Generation through Reinforcement Learning and User Feedback..- Comparative Insights into Modern Architectures for Paraphrase Detection..- Speech Emotion Detection for Tamil Language: Performance Evaluation of Deep Learning Models..- Enhancing Cardiac Pathosis Evaluation Bot: An AI-Powered Multimodal Approach for Risk Assessment.
£170.99
Springer Data Analytics and Management in Data Intensive Domains
Book Synopsis.- Conceptual Modeling and Ontologies..- An Approach to Information Security Domain Analysis for Building a Research Infrastructure..- Approach to Developing a Machine Learning Ontology..- Metagraph Operations using Bigraph Representation..- Ontology and Knowledge Graph of Mathematical Physics in the Semantic Library MathSemanticLib..- Data Quality Assessment in Large Spectral Data Collections. States and Transitions..- Generative and Transformer-Based Models..- Explaining Transformer-Based Models: a Comparative Study of flan-T5 and BERT Using Post-Hoc Methods..- Exploring Fine-Tuned Generative Models for Keyphrase Selection: A Case Study for Russian..- Applying Generative Neural Networks to Extract Argument Relations from Scientific Communication Texts..- An Experimental Study on Cross-Domain Transformer-Based Term Recognition for Russian..- On Open Datasets for LLM Adversarial Testing..- An LLM Approach to Fixing Common Code Issues in Machine Learning Projects..- Machine Learning Methods and Applications..- Verifying Factographic Content in Narrative Texts..- Decoding the Past: Building a Comprehensive Glagolitic Dataset for Historical Text Analysis..- Real-Bogus Classification for ZTF Data Releases: Two Approaches..- Prospects for the Use of Artificial Intelligence for Hydrometeorology..- Statistical Methods and Applications..- Model for Assessing the Need to Involve Users of Social Networks in a Healthy LifeStyle and Giving up Bad Habits According to the Data of a Social Network..- Exploring Patterns of Information Literacy Development in Schools: Application of Multilevel Latent Class Analysis to School Students Survey Data..- Development and Implementation of Software Application for Comparative Analysis of the Estimates of the Complexity of Text Data..- bXES: a Binary Format for Storing and Transferring Software Event Logs.
£59.99
Springer Database Engineered Applications
Book SynopsisLanguage and Models.- Generative Adversarial Networks Reveal Relationship of the Carian, Elder Futhark, Old Hungarian and Orkhon Scripts.- EHSAN: Leveraging ChatGPT in a Hybrid Framework for Arabic Aspect-Based Sentiment Analysis in Healthcare.- Automated Glyph Feature Detection Using Convolutional Neural Networks.- A Vision for Robust and Human-Centric LLM-Based QR Code Security.- Classification.- Exploring Classification with Spectral Transformation.- Optimizing Classification Accuracy with Simulated Annealing in k-Anonymity.- Predicting Gelation in Copolymers Using Deep Learning through a Comparative Study of ANN, CNN, and LSTM Models with SHAP Explainability.- A Total Variation Regularized Framework for Epilepsy-Related MRI Image Segmentation.- Enhancing Flight Delay Prediction with Network-Aware Ensemble Learning.- Distributed Systems.- FedMod: Vertical Federated Learning Using Multi-Server Secret Sharing.- Throughput-Driven Database Replication Using a Ring-Based Order Protocol.- Blockchain-Backed Fuzzy Search for Semi-Structured Translation Data: A Scalable Hybrid Approach with Hyperledger Fabric and Elasticsearch.- Query Answering and Education.- Towards Sustainable DBMS: A Framework for Real-Time Energy Estimation and Query Categorization.- Context-Aware Visualization for Explainable AI Recommendations in Social Media: A Vision for User-Aligned Explanations.- Transparent Adaptive Learning via Data-Centric Multimodal Explainable AI.- Analyzing Student Feedback to Assess NoSQL Education.- Data Mining.- Data Mining for Language Superfamilies Using Congruent Sound Groups.- Computational Decipherment and Cross-Linguistic Analysis of Linear.- Automated Identification of Allographs among the Indus Valley Script Signs.
£64.99
Springer Nature Switzerland AG Advances in Artificial Intelligence and Machine Learning in Big Data Processing
£75.99
Springer Nature Switzerland AG Proceedings of World Conference on Artificial Intelligence Advances and Applications
£208.99
Springer Nature Switzerland AG Proceedings of World Conference on Artificial Intelligence Advances and Applications
£208.99
De Gruyter Mathematical Foundations of Data Science Using R
Book SynopsisThe aim of the book is to help students become data scientists. Since this requires a series of courses over a considerable period of time, the book intends to accompany students from the beginning to an advanced understanding of the knowledge and skills that define a modern data scientist. The book presents a comprehensive overview of the mathematical foundations of the programming language R and of its applications to data science.
£72.68