書名: Data Mining and Predictive Analytics (2版)
作者: D.T.LAROSE
版次: 2
ISBN: 9781118116197
出版社: John Wiley
出版日期: 2016/01
書籍開數、尺寸: 23.9x15.7x4.8
頁數: 824
定價: 2050
售價: 2050
庫存: 已售完
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