A textbook suitable for undergraduate courses in machine learning
and related topics, this book provides a broad survey of the field.
Generous exercises and examples give students a firm grasp of the
concepts and techniques of this rapidly developing, challenging subject.
Introduction to Machine Learning synthesizes and clarifies
the work of leading researchers, much of which is otherwise available
only in undigested technical reports, journals, and conference proceedings.
Beginning with an overview suitable for undergraduate readers, Kodratoff
establishes a theoretical basis for machine learning and describes
its technical concepts and major application areas. Relevant logic
programming examples are given in Prolog.
Introduction to Machine Learning is an accessible and original
introduction to a significant research area.
To view this DRM protected ebook on your desktop or laptop you will need to have Adobe Digital Editions installed. It is a free software. We also strongly recommend that you sign up for an AdobeID at the Adobe website. For more details please see FAQ 1&2. To view this ebook on an iPhone, iPad or Android mobile device you will need the Adobe Digital Editions app, or BlueFire Reader or Txtr app. These are free, too. For more details see this article.
|Size: ||33.1 MB|
|Publisher: ||Morgan Kaufmann|
|Date published: || 2014|
|ISBN: ||9780080509303 (DRM-PDF)|
|Read Aloud: ||not allowed|