Graphical Models for Machine Learning and Digital Communication 在線電子書 圖書標籤: 機器學習 概率模型 圖模型 計算機科學 概率論 數學 加拿大 PGM
發表於2024-11-20
Graphical Models for Machine Learning and Digital Communication 在線電子書 pdf 下載 txt下載 epub 下載 mobi 下載 2024
呃,覺得就是瞭解個框架吧。講的都不詳細。尤其關於digital的舉例非常不適應,看起來比較愣。
評分呃,覺得就是瞭解個框架吧。講的都不詳細。尤其關於digital的舉例非常不適應,看起來比較愣。
評分呃,覺得就是瞭解個框架吧。講的都不詳細。尤其關於digital的舉例非常不適應,看起來比較愣。
評分呃,覺得就是瞭解個框架吧。講的都不詳細。尤其關於digital的舉例非常不適應,看起來比較愣。
評分呃,覺得就是瞭解個框架吧。講的都不詳細。尤其關於digital的舉例非常不適應,看起來比較愣。
Brendan J. Frey Professor
Electrical and Computer Engineering
University of Toronto
A variety of problems in machine learning and digital communication deal with complex but structured natural or artificial systems. In this book, Brendan Frey uses graphical models as an overarching framework to describe and solve problems of pattern classification, unsupervised learning, data compression, and channel coding. Using probabilistic structures such as Bayesian belief networks and Markov random fields, he is able to describe the relationships between random variables in these systems and to apply graph-based inference techniques to develop new algorithms. Among the algorithms described are the wake-sleep algorithm for unsupervised learning, the iterative turbodecoding algorithm (currently the best error-correcting decoding algorithm), the bits-back coding method, the Markov chain Monte Carlo technique, and variational inference.
評分
評分
評分
評分
Graphical Models for Machine Learning and Digital Communication 在線電子書 pdf 下載 txt下載 epub 下載 mobi 下載 2024