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Norli Bokhandel

Information Theory - From Coding to Learning

2025, Innbundet, Engelsk

929,-

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This enthusiastic introduction to the fundamentals of information theory builds from classical Shannon theory through to modern applications in statistical learning, equipping students with a uniquely well-rounded and rigorous foundation for further study. Introduces core topics such as data compression, channel coding, and rate-distortion theory using a unique finite block-length approach. With over 210 end-of-part exercises and numerous examples, students are introduced to contemporary applications in statistics, machine learning and modern communication theory. This textbook presents information-theoretic methods with applications in statistical learning and computer science, such as f-divergences, PAC Bayes and variational principle, Kolmogorov''s metric entropy, strong data processing inequalities, and entropic upper bounds for statistical estimation. Accompanied by a solutions manual for instructors, and additional standalone chapters on more specialized topics in information theory, this is the ideal introductory textbook for senior undergraduate and graduate students in electrical engineering, statistics, and computer science.

Produktegenskaper

  • Forfatter

  • Forlag/utgiver

    Cambridge University Press
  • Format

    Innbundet
  • Språk

    Engelsk
  • Utgivelsesår

    2025
  • Antall sider

    748
  • Utgivelsesdato

    02.01.2025
  • Varenummer

    9781108832908

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