菜菜的sklearn课堂完整版pdf(1-11课).rar

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1 决策树 2 随机森林 3 特征工程 4 降维算法 5 逻辑回归 6 聚类算法 7 SVM version 8 SVM 案例 9 线性回归 10 朴素贝叶斯 11 XGBoost

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