Mathematical Analysis of Machine Learning Algorithms
Author: Tong Zhang
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Description: Mathematical Analysis of Machine Learning Algorithms, is a comprehensive examination of the mathematical foundations underlying machine learning algorithms.
Subject: Machine Learning
Pages: 479
Megabytes: 2.04 MB
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