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  • 机器学习:朴素贝叶斯分类器实现二分类(伯努利型) 代码+项目实战

    一、朴素贝叶斯分类器的构建

    import numpy as np
    
    class BernoulliNavieBayes:
    
        def __init__(self, alpha=1.):
            # 平滑系数, 默认为1(拉普拉斯平滑).
            self.alpha = alpha
    
        def _class_prior_proba_log(self, y, classes):
            '''计算所有类别先验概率P(y=c_k)'''
    
            # 统计各类别样本数量
            c_count = np.count_nonzero(y == classes[:, None], axis=1) 
            # 计算各类别先验概率(平滑修正)
            p = (c_count + self.alpha) / (len(y) + len(classes) * self.alpha)
           
            return np.log(p)
    
        def _conditional_proba_log(self, X, y, classes):
            '''计算所有条件概率P(x^(j)|y=c_k)的对数'''
    
            _, n = X.shape
            K = len(classes)
    
            # P_log: 2个条件概率的对数的矩阵
            # 矩阵P_log[0]存储所有log(P(x^(j)=0|y=c_k))
            # 矩阵P_log[1]存储所有log(P(x^(j)=1|y=c_k))
            P_log = np.empty((2, K, n))
    
            # 迭代每一个类别c_k
            for k, c in enumerate(classes):
                # 获取类别为c_k的实例
                X_c = X[y == c]
                # 统计各特征值为1的实例的数量
                count1 = np.count_nonzero(X_c, axis=0)
                # 计算条件概率P(x^(j)=1|y=c_k)(平滑修正)
                p1 = (count1 + self.alpha) / (len(X_c) + 2 * self.alpha)
                # 将log(P(x^(j)=0|y=c_k))和log(P(x^(j)=1|y=c_k))存入矩阵
                P_log[0, k] = np.log(1 - p1) 
                P_log[1, k] = np.log(p1) 
    
            return P_log
    
        def train(self, X_train, y_train):
            '''训练模型'''
    
            # 获取所有类别
            self.classes = np.unique(y_train)
            # 计算并保存所有先验概率的对数
            self.pp_log = self._class_prior_proba_log(y_train, self.classes)
            # 计算并保存所有条件概率的对数
            self.cp_log = self._conditional_proba_log(X_train, y_train, self.classes)
    
        def _predict(self, x):
            '''对单个实例进行预测'''
    
            K = len(self.classes)
            p_log = np.empty(K)
    
            # 分别获取各特征值为1和0的索引
            idx1 = x == 1
            idx0 = ~idx1
    
            # 迭代每一个类别c_k
            for k in range(K):
                # 计算后验概率P(c_k|x)分子部分的对数.
                p_log[k] = self.pp_log[k] + np.sum(self.cp_log[0, k][idx0]) 
                                        + np.sum(self.cp_log[1, k][idx1])
    
            # 返回具有最大后验概率的类别
            return np.argmax(p_log)
    
        def predict(self, X):
            '''预测'''
    
            # 对X中每个实例, 调用_predict进行预测, 收集结果并返回.
            return np.apply_along_axis(self._predict, axis=1, arr=X)

    二、数据集的获取

    http://archive.ics.uci.edu/ml/machine-learning-databases/spambase/

    三、加载数据与数据转换

    import numpy as np
    data=np.loadtxt('F:/python_test/data/spambase.data',delimiter=',')
    print(data)
    X=data[:,:48]
    X=np.where(X>0 , 1, 0)
    print(X)

    y=data[:,-1].astype('int')
    y

     四、模型拟合、预测与精度

    单次训练

    from sklearn.model_selection import train_test_split
    X_train,X_test,y_train,y_test = train_test_split(X,y,test_size=0.3)
    clf=BernoulliNavieBayes()
    clf.train(X_train,y_train)
    from sklearn.metrics import accuracy_score
    y_pred=clf.predict(X_test)
    print(y_pred)
    accuracy=accuracy_score(y_test,y_pred)
    print(accuracy)

    多次训练,精确度没有太多的改变,说明朴素贝叶斯分类器只要很少的样本就能学习到大部分的特征

    def test(X,y,test_size,N):
        acc=np.empty(N)
        for i in range(N):
            X_train,X_test,y_train,y_test = train_test_split(X,y,test_size=test_size)
            clf=BernoulliNavieBayes()
            clf.train(X_train,y_train)
            y_pred=clf.predict(X_test)
            acc[i]=accuracy_score(y_test,y_pred)
        return np.mean(acc)
    
    sizes=np.arange(0.3,1,0.1)
    print(sizes)
    acc=[test(X,y,test_size,100) for test_size in sizes]
    print(acc)

    import matplotlib.pyplot as plt
    plt.rcParams['font.sans-serif']=['SimHei']
    plt.rcParams['axes.unicode_minus'] = False
    plt.plot(sizes,acc,linestyle='--',color='red')
    plt.ylim([0.87,0.88])
    plt.xlabel('test_size/(test_size+trsin_size)')
    plt.ylabel('accuracy')
    plt.title('精确度趋势图')
    plt.show()

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  • 原文地址:https://www.cnblogs.com/randy-lo/p/13212975.html
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