Description

Book Synopsis

.- Research Track.
.- An Efficient Framework for Approximate Nearest Neighbor Search on High-dimensional Multi-metric Data.
.- REHAB24-6: Physical Therapy Dataset for Analyzing Pose Estimation Methods.
.- ETDD70: Eye-Tracking Dataset for Classification of Dyslexia using AI-based Methods.
.- Demonstrating the Efficacy of Polyadic Queries.
.- Scalable Polyadic Queries.
.- A Dynamic Evaluation Metric for Feature Selection.
.- Personalized Similarity Models for Evaluating Rehabilitation Exercises from Monocular Videos.
.- Impact of the Neighborhood Parameter on Outlier Detection Algorithms.
.- Optimizing CLIP Models for Image Retrieval with Maintained Joint-Embedding Alignment.
.- Bayesian Estimation Approaches for Local Intrinsic Dimensionality.
.- Towards Personalized Similarity Search for Vector Databases.
.- Information Dissimilarity Measures in Decentralized Knowledge Distillation: A Comparative Analysis.
.- An Empirical Evaluation of Search Strategies for Locality-Sensitive Hashing: Lookup, Voting, and Natural Classifier Search.
.- On the Design of Scalable Outlier Detection Methods using Approximate Nearest Neighbor Graphs.
.- A Topological Evaluation Model for Manifold Learning and Embedding Techniques.
.- Local Intrinsic Dimensionality and the Convergence Order of Fixed-Point Iteration.
.- Identifying Propagating Signals with Spatio-Temporal Clustering in Multivariate Time Series.
.- Robust Statistical Scaling of Outlier Scores: Improving the Quality of Outlier Probabilities for Outliers.
.- Advancing the PAM Algorithm to Semi-Supervised k-Medoids Clustering.
.- Hierarchical Clustering without Pairwise Distances by Incremental Similarity Search.
.- Indexing Challenge.
.- Overview of the SISAP 2024 Indexing Challenge.
.- Scaling Learned Metric Index to 100M Datasets.
.- Grouping Sketches to Index High-Dimensional Data in a Resource Limited Setting.
.- Adapting the Exploration Graph for high throughput in low recall regimes.
.- Top-Down Construction of Locally Monotonic Graphs for Similarity Search.

Similarity Search and Applications

    Product form

    £47.49

    Includes FREE delivery

    RRP £49.99 – you save £2.50 (5%)

    Order before 4pm today for delivery by Tue 23 Jun 2026.

    A Paperback by Edgar Chávez

    1 in stock


      View other formats and editions of Similarity Search and Applications by Edgar Chávez

      Publisher: Springer
      Publication Date: 10/25/2024
      ISBN13: 9783031758225, 978-3031758225
      ISBN10: 3031758226

      Description

      Book Synopsis

      .- Research Track.
      .- An Efficient Framework for Approximate Nearest Neighbor Search on High-dimensional Multi-metric Data.
      .- REHAB24-6: Physical Therapy Dataset for Analyzing Pose Estimation Methods.
      .- ETDD70: Eye-Tracking Dataset for Classification of Dyslexia using AI-based Methods.
      .- Demonstrating the Efficacy of Polyadic Queries.
      .- Scalable Polyadic Queries.
      .- A Dynamic Evaluation Metric for Feature Selection.
      .- Personalized Similarity Models for Evaluating Rehabilitation Exercises from Monocular Videos.
      .- Impact of the Neighborhood Parameter on Outlier Detection Algorithms.
      .- Optimizing CLIP Models for Image Retrieval with Maintained Joint-Embedding Alignment.
      .- Bayesian Estimation Approaches for Local Intrinsic Dimensionality.
      .- Towards Personalized Similarity Search for Vector Databases.
      .- Information Dissimilarity Measures in Decentralized Knowledge Distillation: A Comparative Analysis.
      .- An Empirical Evaluation of Search Strategies for Locality-Sensitive Hashing: Lookup, Voting, and Natural Classifier Search.
      .- On the Design of Scalable Outlier Detection Methods using Approximate Nearest Neighbor Graphs.
      .- A Topological Evaluation Model for Manifold Learning and Embedding Techniques.
      .- Local Intrinsic Dimensionality and the Convergence Order of Fixed-Point Iteration.
      .- Identifying Propagating Signals with Spatio-Temporal Clustering in Multivariate Time Series.
      .- Robust Statistical Scaling of Outlier Scores: Improving the Quality of Outlier Probabilities for Outliers.
      .- Advancing the PAM Algorithm to Semi-Supervised k-Medoids Clustering.
      .- Hierarchical Clustering without Pairwise Distances by Incremental Similarity Search.
      .- Indexing Challenge.
      .- Overview of the SISAP 2024 Indexing Challenge.
      .- Scaling Learned Metric Index to 100M Datasets.
      .- Grouping Sketches to Index High-Dimensional Data in a Resource Limited Setting.
      .- Adapting the Exploration Graph for high throughput in low recall regimes.
      .- Top-Down Construction of Locally Monotonic Graphs for Similarity Search.

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account