有监督学习之交叉验证

作者: 来个芒果 | 来源:发表于2017-05-02 20:43 被阅读0次

    在有监督的机器学习算法中,为考察model的generalization ability,我们需要对model进行评估。为防止过拟合,不可以使用训练集数据进行模型评估,此时可以采取cross validation方法:将原始数据分为训练集、测试机

    常见cross validation:

    • Handout validation 留出法
    • K-Fold validation k折交叉验证
    • Leave-one-out 留一法

    一、我们先介绍handout:该方法为k-fold的特殊情况:

    思想:

    • 将原始数据分为训练集、测试集,常见比例为0.8:0.2
    • 使用训练集训练模型
    • 使用测试集来评估模型
    import numpy as np
    from sklearn.linear_model import LogisticRegression
    
    np.random.seed(8)
    shuffled_index = np.random.permutation(admissions.index)
    shuffled_admissions = admissions.loc[shuffled_index]
    train = shuffled_admissions.iloc[0:515]
    test = shuffled_admissions.iloc[515:len(shuffled_admissions)]
    
    #make regression model using training data.
    model=LogisticRegression()
    model.fit(train[['gpa']],train['actual_label'])
    test['predicted_label']=model.predict(test[['gpa']])
    
    accuracy=len(test[(test['predicted_label']==test['actual_label'])])/len(test)
    print(accuracy)
    

    ROC曲线:

    import matplotlib.pyplot as plt
    from sklearn import metrics
    
    probabilities = model.predict_proba(test[["gpa"]])
    fpr, tpr, thresholds = metrics.roc_curve(test["actual_label"], probabilities[:,1])
    plt.plot(fpr, tpr)
    

    AUC:
    在实际应用中,我们更关心的时TPR,即正确预测到正例的比率。为了对该模型进行更有效的评估,可以计算roc曲线下部的面积,即AUC,当auc越接近1时,我们说该模型的效果越好。

    from sklearn.metrics import roc_auc_score
    
    auc_score=roc_auc_score(test['actual_label'],probabilities[:,1])
    print(auc_score)
    

    二、K-Fold

    原理:将原始数据分为k分,k-1份作为训练集,剩下的1份作为测试集,一次迭代;

    下面给出简单的源码:
    分割数据:

    import pandas as pd
    
    admissions = pd.read_csv("admissions.csv")
    admissions["actual_label"] = admissions["admit"]
    admissions = admissions.drop("admit", axis=1)
    
    shuffled_index = np.random.permutation(admissions.index)
    shuffled_admissions = admissions.loc[shuffled_index]
    admissions = shuffled_admissions.reset_index()
    
    admissions.ix[0:128,'fold']=1  #将0-128 row作为第1次iteration
    admissions.ix[129:257,'fold']=2
    admissions.ix[258:386,'fold']=3
    admissions.ix[387:514,'fold']=4
    admissions.ix[515:644,'fold']=5
    admissions['fold']=admissions['fold'].astype(int)
    print(admissions.head())
    print(admissions.tail())
    

    生成模型,对每个模型进行评估,最后计算平均准确率accuracy:

    import numpy as np
    fold_ids = [1,2,3,4,5]
    lr=LogisticRegression()
    def train_and_test(admissions,fold_ids):
        accuracies=[]
        for i in fold_ids:
            train_iteration=admissions[admissions['fold']!=i]
            test_iteration=admissions[admissions['fold']==i]
            # make model using training data set.
            lr.fit(train_iteration[['gpa']],train_iteration['actual_label'])
            #predicting test data set.
            test_iteration['labels']=lr.predict(test_iteration[['gpa']])
            iteration_accuracy=len(test_iteration[test_iteration['labels']==test_iteration['actual_label']])/len(test_iteration)
            accuracies.append(iteration_accuracy)
        return accuracies
    accuracies=train_and_test(admissions,fold_ids)
    print(accuracies)
    average_accuracy=sum(accuracies)/len(fold_ids)
    print(average_accuracy)
    
    

    python中的sklearn库已经封装好了该方法,使用sklearn库完成:

    from sklearn.cross_validation import KFold
    from sklearn.cross_validation import cross_val_score
    from sklearn.linear_model import LogisticRegression
    
    admissions = pd.read_csv("admissions.csv")
    admissions["actual_label"] = admissions["admit"]
    admissions = admissions.drop("admit", axis=1)
    kf=KFold(len(admissions),5,shuffle=True,random_state=8)
    
    lr=LogisticRegression()
    accuracies=cross_val_score(lr,admissions[['gpa']],admissions['actual_label'],scoring='accuracy',cv=kf)
    average_accuracy=sum(accuracies)/len(accuracies)
    print(accuracies)
    print(average_accuracy)
    

    注意:初始化KFold类并不会生成模型、预测数据,仅仅是对数据做了分组。
    在进行线性/逻辑回归时常常使用交叉验证来评估模型。

    如果是对于单变量模型--即特征只有一个,往往采用handout方法;
    多余多变量模型--具有多个特征列,往往会采用kfold方法。

    参考地址:https://zh.wikipedia.org/wiki/%E4%BA%A4%E5%8F%89%E9%A9%97%E8%AD%89

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