Universal Features for High-Dimensional Learning and Inference

Author:   Shao-Lun Huang ,  Anuran Makur ,  Gregory W. Wornell ,  Lizhong Zheng
Publisher:   now publishers Inc
ISBN:  

9781638281764


Pages:   320
Publication Date:   05 February 2024
Format:   Paperback
Availability:   In Print   Availability explained
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Universal Features for High-Dimensional Learning and Inference


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Overview

In many contemporary and emerging applications of machine learning and statistical inference, the phenomena of interest are characterized by variables defined over large alphabets. This increasing size of both the data and the number of inferences, and the limited available training data means there is a need to understand which inference tasks can be most effectively carried out, and, in turn, what features of the data are most relevant to them. In this monograph, the authors develop the idea of extracting “universally good” features, and establish that diverse notions of such universality lead to precisely the same features. The information-theoretic approach used results in a local information geometric analysis that facilitates their computation in a host of applications. The authors provide a comprehensive treatment that guides the reader through the basic principles to the advanced techniques including many new results. They emphasize a development from first-principles together with common, unifying terminology and notation, and pointers to the rich embodying literature, both historical and contemporary. Written for students and researchers, this monograph is a complete treatise on the information theoretic treatment of a recognized and current problem in machine learning and statistical inference.

Full Product Details

Author:   Shao-Lun Huang ,  Anuran Makur ,  Gregory W. Wornell ,  Lizhong Zheng
Publisher:   now publishers Inc
Imprint:   now publishers Inc
Weight:   0.435kg
ISBN:  

9781638281764


ISBN 10:   1638281769
Pages:   320
Publication Date:   05 February 2024
Audience:   Professional and scholarly ,  Professional & Vocational
Format:   Paperback
Publisher's Status:   Active
Availability:   In Print   Availability explained
This item will be ordered in for you from one of our suppliers. Upon receipt, we will promptly dispatch it out to you. For in store availability, please contact us.

Table of Contents

1. Introduction 2. The Modal Decomposition of Joint Distributions 3. Variational Characterization of the Modal Decomposition 4. Local Information Geometry 5. Universal Feature Characterizations 6. Learning Modal Decompositions 7. Collaborative Filtering and Matrix Factorization 8. Softmax Regression 9. Gaussian Distributions and Linear Features 10. Nonlinear Features and nonGaussian Distributions 11. Semi-Supervised Learning 12. Modal Decomposition of Markov Random Fields 13. Emerging Applications and Related Developments Acknowledgements Appendices References

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