Machine Learning Refined Foundations, Algorithms, and Applications
- Textbook
Description
With its intuitive yet rigorous approach to machine learning, this text provides students with the fundamental knowledge and practical tools needed to conduct research and build data-driven products. The authors prioritize geometric intuition and algorithmic thinking, and include detail on all the essential mathematical prerequisites, to offer a fresh and accessible way to learn. Practical applications are emphasized, with examples from disciplines including computer vision, natural language processing, economics, neuroscience, recommender systems, physics, and biology. Over 300 color illustrations are…
- Add bookmark
- Cite
- Share
Key features
- Encourages geometric intuition and algorithmic thinking to provide an intuitive understanding of key concepts and an interactive way of learning
- Features coding exercises for Python to help put knowledge into practice
- Emphasizes practical applications, with real-world examples, to give students the confidence to conduct research, build products, and solve problems
- Completely self-contained, with appendices covering the essential mathematical prerequisites
About the book
- DOI https://doi.org/10.1017/9781108690935
- Subjects Communications and Signal Processing,Computer Science,Engineering,Machine Learning and Pattern Recognition
- Format: Hardback
- Publication date: 12 March 2020
- ISBN: 9781108480727
- Dimensions (mm): 247 x 174 mm
- Weight: 1.36kg
- Contains: 316 colour illus. 127 exercises
- Page extent: 594 pages
- Availability: In stock
- Format: Digital
- Publication date: 05 February 2020
- ISBN: 9781108690935
Access options
Review the options below to login to check your access.
Personal login
Log in with your Cambridge Higher Education account to check access.
Purchase options
There are no purchase options available for this title.
If you believe you should have access to this content, please contact your institutional librarian or consult our FAQ page for further information about accessing our content.