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  • 机器学习sklearn(47): 特征工程(十四) 特征选择(五)Embedded嵌入法/Wrapper包装法

    1 Embedded嵌入法

     

     

     

     

     

     

    from sklearn.feature_selection import SelectFromModel
    from sklearn.ensemble import RandomForestClassifier as RFC
    RFC_ = RFC(n_estimators =10,random_state=0)
    X_embedded = SelectFromModel(RFC_,threshold=0.005).fit_transform(X,y) #在这里我只想取出来有限的特征。0.005这个阈值对于有780个特征的数据来说,是非常高的阈值,因为平均每个特征
    只能够分到大约0.001的feature_importances_
    X_embedded.shape
    #模型的维度明显被降低了
    #同样的,我们也可以画学习曲线来找最佳阈值
    #======【TIME WARNING:10 mins】======#
    import numpy as np
    import matplotlib.pyplot as plt
    RFC_.fit(X,y).feature_importances_
    threshold = np.linspace(0,(RFC_.fit(X,y).feature_importances_).max(),20)
    score = []
    for i in threshold:
        X_embedded = SelectFromModel(RFC_,threshold=i).fit_transform(X,y)
        once = cross_val_score(RFC_,X_embedded,y,cv=5).mean()
        score.append(once)
    plt.plot(threshold,score)
    plt.show()

     

    X_embedded = SelectFromModel(RFC_,threshold=0.00067).fit_transform(X,y)
    X_embedded.shape
    cross_val_score(RFC_,X_embedded,y,cv=5).mean()

    #======【TIME WARNING:10 mins】======#
    score2 = []
    for i in np.linspace(0,0.00134,20):
        X_embedded = SelectFromModel(RFC_,threshold=i).fit_transform(X,y)
        once = cross_val_score(RFC_,X_embedded,y,cv=5).mean()
        score2.append(once)
    plt.figure(figsize=[20,5])
    plt.plot(np.linspace(0,0.00134,20),score2)
    plt.xticks(np.linspace(0,0.00134,20))
    plt.show()

     

    X_embedded = SelectFromModel(RFC_,threshold=0.000564).fit_transform(X,y)
    X_embedded.shape
    cross_val_score(RFC_,X_embedded,y,cv=5).mean()
    #=====【TIME WARNING:2 min】=====#
    #我们可能已经找到了现有模型下的最佳结果,如果我们调整一下随机森林的参数呢?
    cross_val_score(RFC(n_estimators=100,random_state=0),X_embedded,y,cv=5).mean()

     2 Wrapper包装法

     

     

     

    from sklearn.feature_selection import RFE
    RFC_ = RFC(n_estimators =10,random_state=0)
    selector = RFE(RFC_, n_features_to_select=340, step=50).fit(X, y)
    selector.support_.sum()
    selector.ranking_
    X_wrapper = selector.transform(X)
    cross_val_score(RFC_,X_wrapper,y,cv=5).mean()
    我们也可以对包装法画学习曲线: 
    #======【TIME WARNING: 15 mins】======#
    score = []
    for i in range(1,751,50):
        X_wrapper = RFE(RFC_,n_features_to_select=i, step=50).fit_transform(X,y)
        once = cross_val_score(RFC_,X_wrapper,y,cv=5).mean()
        score.append(once)
    plt.figure(figsize=[20,5])
    plt.plot(range(1,751,50),score)
    plt.xticks(range(1,751,50))
    plt.show()

     

     3  特征选择总结

    参考;https://blog.csdn.net/kylin_learn/article/details/82658673

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  • 原文地址:https://www.cnblogs.com/qiu-hua/p/14932364.html
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