0
*
0
*
1450
2025
book-filter
Work cover

Information Theory, Inference & Learning Algorithms

  • David J.C. MacKay

4.00

1 ratings

Book Jacket:

This textbook introduces theory in tandem with applications. Information theory is taught alongside practical communication systems, such as arithmetic coding for data compression and sparse-graph codes for error-correction. A toolbox of inference techniques, including message-passing algorithms, Monte Carlo methods, and variational approximations, are developed alongside applications of these tools to clustering, convolutional codes, independent component analysis, and neural networks.

Publisher Description:

This textbook offers comprehensive coverage of Shannon's theory of information as well as the theory of neural networks and probabilistic data modelling. It includes explanations of Shannon's important source encoding theorem and noisy channel theorem as well as descriptions of practical data compression systems. Many examples and exercises make the book ideal for students to use as a class textbook, or as a resource for researchers who need to work with neural networks or state-of-the-art error-correcting codes.

Genres

  • Information theory
  • Inference
  • Machine Learning
  • Bayesian
  • Aprendizado computacional
  • Information, Théorie de l'
  • Inferenz
  • Statistische analyse
  • Toepassingen
  • Maschinelles Lernen
  • Informationstheorie
  • Teoria da informação
  • Informatietheorie
  • Algoritmen
  • Algorithms
  • Teoria da informacao
  • Information, Theorie de l'
  • Inferenz <künstliche intelligenz>
  • Inferenz (künstliche intelligenz)
  • Q360 .m23 2003
  • 003/.54
  • Dat 708f
  • Qh 210
  • Sk 880
  • St 130
  • St 300
Already read

1

people already read

Currently reading

1

people are currently reading

Want to read

19

people want to read

About the author

  • David J.C. MacKay

    April 22, 1967 - 14 April 2016

    4.75

    4 ratings · 3 works

Editions

  • Edition cover

    University of Cambridge ESOL Examinations, TBS

    2004

  • Edition cover

    CAMBRIDGE UNIV PRESS, Cambridge University Press

    2003

  • Edition cover

    1st edition

    Cambridge University Press

    2003