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Information Theory for Data Science

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The ebook edition of this title is Open Access and freely available to read online. This book aims at demonstrating modern roles of information theory in a widening array of data science applicatio...
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  • 03 April 2023
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The ebook edition of this title is Open Access and freely available to read online.

Information theory deals with mathematical laws that govern the flow, representation and transmission of information. The most significant achievement of the field is the invention of digital communication which forms the basis of our daily-life digital products such as smart phones, laptops and any IoT devices. Recently it has also found important roles in a spotlight field that has been revolutionized during the past decades: data science.

This book aims at demonstrating modern roles of information theory in a widening array of data science applications. The first and second parts of the book covers the core concepts of information theory: basic concepts on several key notions; and celebrated source and channel coding theorems which concern the fundamental limits of communication. The last part focuses on applications that arise in data science, including social networks, ranking, and machine learning.

The book is written as a text for senior undergraduate and graduate students working on Information Theory and Communications, and it should also prove to be a valuable reference for professionals and engineers from these fields.

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Price: $135.00
Pages: 428
Publisher: Emerald Publishing Limited
Imprint: Now Publishers Inc
Publication Date: 03 April 2023
ISBN: 9781638281146
Format: Hardcover
BISACs:

COMPUTERS / Information Theory, Digital and Information technology: general topics

Dr. Changho Suh is an Associate Professor of Electrical Engineering at KAIST. He received the B.S. and M.S. degrees in Electrical Engineering from KAIST in 2000 and 2002 respectively, and the Ph.D. degree in Electrical Engineering and Computer Sciences from UC Berkeley in 2011.

Introduction
Chapter 1. Source Coding
Chapter 2. Channel Coding
Chapter 3. Data Science Applications
Appendices