書名: PROBABILISTIC MACHINE LEARNING: AN INTRODUCTION
作者: MURPHY
ISBN: 9780262046824
出版社: The MIT Press
出版日期: 2022/03
書籍開數、尺寸: 23.6*21.1
重量: 1.58 Kg
頁數: 864
#數學與統計學
#機率與統計
#資料分析
#統計軟體
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Probabilistic Machine Learning 系列名:Adaptive Computation and Machine Learning series ISBN13:9780262046824 出版社:Mit Pr 作者:Kevin P. Murphy 裝訂/頁數:精裝/864頁 出版日:2022/02/01

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