Description

Book Synopsis

Fundamentals of Pattern Recognition and Machine Learning is designed for a one or two-semester introductory course in Pattern Recognition or Machine Learning at the graduate or advanced undergraduate level. The book combines theory and practice and is suitable to the classroom and self-study. It has grown out of lecture notes and assignments that the author has developed while teaching classes on this topic for the past 13 years at Texas A&M University.

The book is intended to be concise but thorough. It does not attempt an encyclopedic approach, but covers in significant detail the tools commonly used in pattern recognition and machine learning, including classification, dimensionality reduction, regression, and clustering, as well as recent popular topics such as Gaussian process regression and convolutional neural networks. In addition, the selection of topics has a few features that are unique among comparable texts: it contains an extensive chapter on classifier error estimation, as well as sections on Bayesian classification, Bayesian error estimation, separate sampling, and rank-based classification.

The book is mathematically rigorous and covers the classical theorems in the area. Nevertheless, an effort is made in the book to strike a balance between theory and practice. In particular, examples with datasets from applications in bioinformatics and materials informatics are used throughout to illustrate the theory. These datasets are available from the book website to be used in end-of-chapter coding assignments based on python and scikit-learn. All plots in the text were generated using python scripts, which are also available on the book website.



Table of Contents
1. Introduction.- 2. Optimal Classification.- 3. Sample-Based Classification.- 4. Parametric Classification.- 5. Nonparametric Classification.- 6. Function-Approximation Classification.- 7. Error Estimation for Classification.- 8. Model Selection for Classification.- 9. Dimensionality Reduction.- 10. Clustering.- 11. Regression.- Appendix.

Fundamentals of Pattern Recognition and Machine

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Order before 4pm tomorrow for delivery by Thu 15 Jan 2026.

A Paperback / softback by Ulisses Braga-Neto

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    View other formats and editions of Fundamentals of Pattern Recognition and Machine by Ulisses Braga-Neto

    Publisher: Springer Nature Switzerland AG
    Publication Date: 11/09/2021
    ISBN13: 9783030276584, 978-3030276584
    ISBN10: 3030276589

    Description

    Book Synopsis

    Fundamentals of Pattern Recognition and Machine Learning is designed for a one or two-semester introductory course in Pattern Recognition or Machine Learning at the graduate or advanced undergraduate level. The book combines theory and practice and is suitable to the classroom and self-study. It has grown out of lecture notes and assignments that the author has developed while teaching classes on this topic for the past 13 years at Texas A&M University.

    The book is intended to be concise but thorough. It does not attempt an encyclopedic approach, but covers in significant detail the tools commonly used in pattern recognition and machine learning, including classification, dimensionality reduction, regression, and clustering, as well as recent popular topics such as Gaussian process regression and convolutional neural networks. In addition, the selection of topics has a few features that are unique among comparable texts: it contains an extensive chapter on classifier error estimation, as well as sections on Bayesian classification, Bayesian error estimation, separate sampling, and rank-based classification.

    The book is mathematically rigorous and covers the classical theorems in the area. Nevertheless, an effort is made in the book to strike a balance between theory and practice. In particular, examples with datasets from applications in bioinformatics and materials informatics are used throughout to illustrate the theory. These datasets are available from the book website to be used in end-of-chapter coding assignments based on python and scikit-learn. All plots in the text were generated using python scripts, which are also available on the book website.



    Table of Contents
    1. Introduction.- 2. Optimal Classification.- 3. Sample-Based Classification.- 4. Parametric Classification.- 5. Nonparametric Classification.- 6. Function-Approximation Classification.- 7. Error Estimation for Classification.- 8. Model Selection for Classification.- 9. Dimensionality Reduction.- 10. Clustering.- 11. Regression.- Appendix.

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