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  • © 2010

Information Theoretic Learning

Renyi's Entropy and Kernel Perspectives

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Part of the book series: Information Science and Statistics (ISS)

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Table of contents (11 chapters)

  1. Front Matter

    Pages i-xxii
  2. Renyi’s Entropy, Divergence and Their Nonparametric Estimators

    • Dongxin Xu, Deniz Erdogmuns
    Pages 47-102
  3. Algorithms for Entropy and Correntropy Adaptation with Applications to Linear Systems

    • Deniz Erdogmus, Seungju Han, Abhishek Singh
    Pages 141-179
  4. Nonlinear Adaptive Filtering with MEE, MCC, and Applications

    • Deniz Erdogmus, Rodney Morejon, Weifeng Liu
    Pages 181-218
  5. Classification with EEC, Divergence Measures, and Error Bounds

    • Deniz Erdogmus, Dongxin Xu, Kenneth Hild II
    Pages 219-261
  6. Clustering with ITL Principles

    • Robert Jenssen, Sudhir Rao
    Pages 263-298
  7. Self-Organizing ITL Principles for Unsupervised Learning

    • Sudhir Rao, Deniz Erdogmus, Dongxin Xu, Kenneth Hild II
    Pages 299-349
  8. A Reproducing Kernel Hilbert Space Framework for ITL

    • Jianwu Xu, Robert Jenssen, Antonio Paiva, Il Park
    Pages 351-384
  9. Correntropy for Random Variables: Properties and Applications in Statistical Inference

    • Weifeng Liu, Puskal Pokharel, Jianwu Xu, Sohan Seth
    Pages 385-413
  10. Correntropy for Random Processes: Properties and Applications in Signal Processing

    • Puskal Pokharel, Ignacio Santamaria, Jianwu Xu, Kyu-hwa Jeong, Weifeng Liu
    Pages 415-455
  11. Back Matter

    Pages 457-515

About this book

This book presents the first cohesive treatment of Information Theoretic Learning (ITL) algorithms to adapt linear or nonlinear learning machines both in supervised or unsupervised paradigms. ITL is a framework where the conventional concepts of second order statistics (covariance, L2 distances, correlation functions) are substituted by scalars and functions with information theoretic underpinnings, respectively entropy, mutual information and correntropy.

ITL quantifies the stochastic structure of the data beyond second order statistics for improved performance without using full-blown Bayesian approaches that require a much larger computational cost. This is possible because of a non-parametric estimator of Renyi’s quadratic entropy that is only a function of pairwise differences between samples. The book compares the performance of ITL algorithms with the second order counterparts in many engineering and machine learning applications.

Students, practitioners and researchers interested in statistical signal processing, computational intelligence, and machine learning will find in this book the theory to understand the basics, the algorithms to implement applications, and exciting but still unexplored leads that will provide fertile ground for future research.

José C. Principe is Distinguished Professor of Electrical and Biomedical Engineering, and BellSouth Professor at the University of Florida, and the Founder and Director of the Computational NeuroEngineering Laboratory. He is an IEEE and AIMBE Fellow, Past President of the International Neural Network Society, Past Editor-in-Chief of the IEEE Trans. on Biomedical Engineering and the Founder Editor-in-Chief of the IEEE Reviews on Biomedical Engineering. He has written an interactive electronic book on Neural Networks, a book on Brain Machine Interface Engineering and more recently a book on Kernel Adaptive Filtering, and was awarded the 2011 IEEE NeuralNetwork Pioneer Award.

Reviews

From the book reviews:

“The book is remarkable in various ways in the information it presents on the concept and use of entropy functions and their applications in signal processing and solution of statistical problems such as M-estimation, classification, and clustering. Students of engineering and statistics will greatly benefit by reading it.” (C. R. Rao, Technometrics, Vol. 55 (1), February, 2013)

Authors and Affiliations

  • Dept. Electrical Engineering &, University of Florida, Gainesville, U.S.A.

    Jose C. Principe

About the author

José C. Principe is Distinguished Professor of Electrical and Biomedical Engineering, and BellSouth Professor at the University of Florida, and the Founder and Director of the Computational NeuroEngineering Laboratory. He is an IEEE and AIMBE Fellow, Past President of the International Neural Network Society, Past Editor-in-Chief of the IEEE Trans. on Biomedical Engineering and the Founder Editor-in-Chief of the IEEE Reviews on Biomedical Engineering. He has written an interactive electronic book on Neural Networks, a book on Brain Machine Interface Engineering and more recently a book on Kernel Adaptive Filtering, and was awarded the 2011 IEEE Neural Network Pioneer Award.

Bibliographic Information

Buy it now

Buying options

eBook USD 169.00
Price excludes VAT (USA)
  • Available as EPUB and PDF
  • Read on any device
  • Instant download
  • Own it forever
Softcover Book USD 219.99
Price excludes VAT (USA)
  • Compact, lightweight edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info
Hardcover Book USD 219.99
Price excludes VAT (USA)
  • Durable hardcover edition
  • Dispatched in 3 to 5 business days
  • Free shipping worldwide - see info

Tax calculation will be finalised at checkout

Other ways to access