Random Matrix Methods for Machine Learning
Discover the transformative power of random matrix theory in machine learning with Random Matrix Methods for Machine Learning by Romain Couillet. Published by Cambridge University Press in 2022, this comprehensive hardback edition spans 408 pages and serves as an essential tutorial for graduate students, practitioners, and advanced users alike.
Delve into the foundational concepts of random matrix theory while exploring a wide array of sophisticated applications, including power detection and deep neural networks. This book not only provides theoretical insights but also equips you with practical tools, featuring MATLAB and Python code for all discussed concepts and applications. Enhance your understanding and skill set in this cutting-edge field with Couillet's expert guidance.