Sale!

Understanding Machine Learning: From Theory to Algorithms – PDF

eBook details

  • Authors: Shai Shalev-Shwartz, Shai Ben David
  • File Size: 3 MB
  • Format: PDF
  • Length: 415 pages
  • Publisher: Cambridge University Press; 1st edition
  • Publication Date: May 19, 2014
  • Language: English
  • ASIN: B00J8LQU8I
  • ISBN-10: 1107057132, 1107512824
  • ISBN-13: 9781107057135, 9781107512825

$6.00

SKU: understanding-machine-learning-from-theory-to-algorithms-ebook Categories: , , , , Tags: , ,

About The Author

Shai Ben David

Shai Shalev-Shwartz

Machine knowing is among the fastest growing locations of computer technology, with far- reaching applications. The objective of this digital book Understanding Machine Learning: From Theory to Algorithms (PDF) is to present artificial intelligence, and the algorithmic paradigms it provides, in a principled method. The ebook supplies a theoretical account of the principles underlying artificial intelligence and the mathematical derivations that change these concepts into useful algorithms. Following a discussion of the essentials, the ebook covers a large selection of main subjects unaddressed by previous books. These consist of a conversation of the computational intricacy of knowing and the principles of stability and convexity; essential algorithmic paradigms consisting of neural networks, stochastic gradient descent, and structured output knowing; and emerging theoretical principles such as the PAC-Bayes method and compression- based bounds. Designed for starting graduates or innovative undergrads, the book makes the principles and algorithms of artificial intelligence available to trainees and non- professional readers in computer technology, mathematics, stats, and engineering.

Reviews

This sophisticated ebook covers both strenuous theory and useful approaches of artificial intelligence. This makes it a rather distinct resource, suitable for all those who desire to comprehend how to discover structure in information.” – Professor Bernhard Sch ölkopf, Max Planck Institute for Intelligent Systems “This book offers a clear and broadly available view of the most essential concepts in the location of complete info choice issues. Written by 2 essential factors to the theoretical structures in this location, it covers the variety from algorithms to theoretical structures, at a level suitable for a sophisticated undergraduate course.” -Dr Peter L. Bartlett, University of California, Berkeley “This is a prompt book on the mathematical structures of artificial intelligence, supplying a treatment that is both broad and deep, not only strenuous however likewise with insight and instinct. It provides a wide variety of traditional, basic algorithmic and analysis methods in addition to cutting- edge research study instructions. This is a terrific ebook for anybody thinking about the computational and mathematical foundations of this essential and remarkable field.” – Avrim Blum, Carnegie Mellon University  .

Reviews

There are no reviews yet.

Be the first to review “Understanding Machine Learning: From Theory to Algorithms – PDF”