• sklearn之学习曲线


    '''
        学习曲线:模型性能 = f(训练集大小)
        学习曲线所需API:
                _, train_scores, test_scores = ms.learning_curve(
                                    model,        # 模型
                                    输入集, 输出集,
                                    [0.9, 0.8, 0.7],    # 训练集大小序列
                                    cv=5        # 折叠数
                                    )
    
        案例:在小汽车评级案例中使用学习曲线选择训练集大小最优参数。
    '''
    
    import numpy as np
    import matplotlib.pyplot as mp
    import sklearn.preprocessing as sp
    import sklearn.ensemble as se
    import sklearn.model_selection as ms
    import sklearn.metrics as sm
    import warnings
    
    warnings.filterwarnings('ignore')
    
    data = []
    with open('./ml_data/car.txt', 'r') as f:
        for line in f.readlines():
            sample = line[:-1].split(',')
            data.append(sample)
    data = np.array(data)
    # print(data.shape)
    
    # 整理好每一列的标签编码器encoders
    # 整理好训练输入集与输出集
    data = data.T
    # print(data.shape)
    encoders = []
    train_x, train_y = [], []
    for row in range(len(data)):
        encoder = sp.LabelEncoder()
        if row < len(data) - 1:  # 不是最后列
            train_x.append(encoder.fit_transform(data[row]))
        else:  # 是最后一列,作为输出集
            train_y = encoder.fit_transform(data[row])
        encoders.append(encoder)
    
    train_x = np.array(train_x).T
    # 训练随机森林分类器
    model = se.RandomForestClassifier(max_depth=6, n_estimators=150, random_state=7)
    
    # 绘制学习曲线
    train_sizes = np.linspace(0.1, 1, 10)
    _, train_scores, test_scores = ms.learning_curve(model, train_x, train_y, train_sizes=train_sizes, cv=5)
    print(test_scores)
    print(np.mean(test_scores,axis=1))
    
    
    # 训练之前进行交叉验证
    cv = ms.cross_val_score(model, train_x, train_y, cv=4, scoring='f1_weighted')
    print(cv.mean())
    model.fit(train_x, train_y)
    
    # 自定义测试集,预测小汽车的等级
    # 保证每个特征使用的标签编码器与训练时使用的标签编码器匹配
    data = [
        ['high', 'med', '5more', '4', 'big', 'low', 'unacc'],
        ['high', 'high', '4', '4', 'med', 'med', 'acc'],
        ['low', 'low', '2', '4', 'small', 'high', 'good'],
        ['low', 'med', '3', '4', 'med', 'high', 'vgood']]
    
    data = np.array(data).T
    test_x, test_y = [], []
    for row in range(len(data)):
        encoder = encoders[row]  # 每列对应的标签编码器
        if row < len(data) - 1:
            test_x.append(encoder.transform(data[row]))  # 这里需要训练了,直接转换
        else:
            test_y = encoder.transform(data[row])
    test_x = np.array(test_x).T
    
    pred_test_y = model.predict(test_x)
    print(pred_test_y)
    pred_test_y = encoders[-1].inverse_transform(pred_test_y)
    test_y = encoders[-1].inverse_transform(test_y)
    print(pred_test_y)
    print(test_y)
    
    # 画图显示学习曲线
    mp.figure('Learning Curve', facecolor='lightgray')
    mp.title('Learning Curve')
    mp.xlabel('train size')
    mp.ylabel('f1 score')
    mp.grid(linestyle=":")
    mp.plot(train_sizes, np.mean(test_scores, axis=1), label='Learning Curve')
    mp.legend()
    
    mp.show()
    
    
    输出结果:
    
    [[0.69942197 0.69942197 0.69942197 0.69942197 0.70348837]
     [0.67630058 0.79768786 0.69942197 0.71965318 0.70348837]
     [0.66184971 0.70231214 0.75433526 0.74855491 0.70348837]
     [0.71098266 0.78323699 0.74277457 0.73988439 0.7005814 ]
     [0.71387283 0.71965318 0.5982659  0.74277457 0.74127907]
     [0.71387283 0.76878613 0.70809249 0.74855491 0.73837209]
     [0.71387283 0.7716763  0.72254335 0.82080925 0.75872093]
     [0.71387283 0.76878613 0.72254335 0.83526012 0.75872093]
     [0.71387283 0.7716763  0.73121387 0.83526012 0.76744186]
     [0.73121387 0.76878613 0.72254335 0.8583815  0.86046512]]
    [0.70023525 0.71931039 0.71410808 0.735492   0.70316911 0.73553569
     0.75752453 0.75983667 0.763893   0.78827799]
    0.7477732938195376
    [2 0 0 3]
    ['unacc' 'acc' 'acc' 'vgood']
    ['unacc' 'acc' 'good' 'vgood']

      

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  • 原文地址:https://www.cnblogs.com/yuxiangyang/p/11194207.html
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