書名: Introduction to Machine Learning (4版)
作者: ALPAYDIN
版次: 4
ISBN: 9780262043793
出版社: The MIT Press
重量: 1.47 Kg
頁數: 712
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定價: 1690
售價: 1656
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Introduction to Machine Learning 系列名:Adaptive Computation and Machine Learning series ISBN13:9780262043793 出版社:Mit Pr 作者:Ethem Alpaydin (OEzyegin University) 裝訂/頁數:精裝/712頁 規格:20.3cm*22.9cm*3.7cm (高/寬/厚) 版次:4 出版日:2020/03/24 內容簡介 A substantially revised fourth edition of a comprehensive textbook, including new coverage of recent advances in deep learning and neural networks.

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