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Python SVR.C方法代码示例

本文整理汇总了Python中sklearn.svm.SVR.C方法的典型用法代码示例。如果您正苦于以下问题:Python SVR.C方法的具体用法?Python SVR.C怎么用?Python SVR.C使用的例子?那么恭喜您, 这里精选的方法代码示例或许可以为您提供帮助。您也可以进一步了解该方法所在sklearn.svm.SVR的用法示例。


在下文中一共展示了SVR.C方法的2个代码示例,这些例子默认根据受欢迎程度排序。您可以为喜欢或者感觉有用的代码点赞,您的评价将有助于系统推荐出更棒的Python代码示例。

示例1: train_regress

# 需要导入模块: from sklearn.svm import SVR [as 别名]
# 或者: from sklearn.svm.SVR import C [as 别名]
    def train_regress (self, train, trainlabel, seed, Cmin, Cmax, numC, rmin, rmax, numr, degree=3, method = 'rrmse', rad_stat =2):
        C_range=np.logspace(Cmin, Cmax, num=numC, base=2,endpoint= True)
        gamma_range=np.logspace(rmin, rmax, num=numr, base=2,endpoint= True)
        
        svc = SVR(kernel=seed)
#        mean_score=[]
        df_C_gamma= DataFrame({'gamma_range':gamma_range})
#        df_this = DataFrame({'gamma_range':gamma_range})
        count = 0 
        for C in C_range:    
            score_C=[]    
#            score_C_this = []
            count=count+1
            for gamma in gamma_range: 
                svc.epsilon = 0.00001                 
     
                svc.C = C
                svc.gamma = gamma
                svc.degree = degree
                svc.random_state = rad_stat
                this_scores = cross_val_score(svc, train, trainlabel, scoring=method, cv=10, n_jobs=-1 \
                                              )
                
                score_C.append(np.mean(this_scores))                                      

               #score_C_this.append(np.mean(this_scores))
            print (np.mean(score_C) )
            print ("%r cycle finished, %r left" %(count, numC-count))
            df_C_gamma[C]= score_C
            #df_this[C] = score_C_this        
        
        return df_C_gamma 
开发者ID:jp1989326,项目名称:Machine_learning_for_reliability_analysis,代码行数:34,代码来源:MySVM.py

示例2: main

# 需要导入模块: from sklearn.svm import SVR [as 别名]
# 或者: from sklearn.svm.SVR import C [as 别名]
def main():
    df_train = pd.read_csv("data/train.csv")
    df_test = pd.read_csv("data/test.csv")
    y = np.log(np.array(df_train["revenue"]))
    plt.hist(df_train["P28"])
    plt.show()
    return
    # test_id=df_test["Id"]
    df = pd.concat([df_train, df_test])
    df = processing(df)
    df_train = df[0:137, :]
    df_test = df[137:, :]
    X = df_train
    print X.shape, y.shape
    X_test = df_test
    model = SVR(kernel="linear")
    # samplesubmit.head()
    if 1:
        selector = SelectPercentile(f_regression, percentile=100)
        selector.fit(X, y)
        print selector.pvalues_
        scores = -np.log10(selector.pvalues_)
        scores /= scores.max()
        print scores
        feature_index_0 = scores > 0.1
    # model.C=1.e4
    # model.gamma=0.2
    X = X[:, feature_index_0]
    # print X.shape
    # model.fit(X,y)
    # y_pred=model.predict(X)
    # meanres=np.median(y-y_pred)
    # stdres=np.median(np.abs(y-y_pred-meanres))
    # print meanres,stdres
    # outlierindex=np.abs(y-y_pred-meanres)>5.*stdres
    # print len(y[outlierindex])
    # plt.plot(y-y_pred,'.')
    # plt.plot((y-y_pred)[outlierindex],'r.')
    # plt.show()
    # return
    # X=X[~outlierindex,:]
    # y=y[~outlierindex]
    # if(1):
    #    selector=SelectPercentile(f_regression,percentile=100)
    #    selector.fit(X,y)
    #    print selector.pvalues_
    #    scores=-np.log10(selector.pvalues_)
    #    scores/=scores.max()
    #    print scores
    #    feature_index_1=scores>0.1
    ##return
    if 0:
        # gammas=np.logspace(-7,7,50)
        # gammas=[0.1]
        # C_s=np.array([1])

        # return
        # model=SVR()
        # X=X[:,feature_index_1]
        C_s = np.logspace(-7, 2, 50)
        # C_s=np.logspace(0,5,50)
        scores_mean = []
        scores_std = []
        best_score = 1.0e20
        best_C = 1
        best_gamma = 1
        for C in C_s:
            if 1:
                # for gamma in gammas:
                model.C = C
                # model.gamma=gamma
                scores = cross_val_score(model, X, y, cv=10, scoring="mean_squared_error")
                scores_mean.append(np.sqrt(-np.mean(scores)))
                print np.sqrt(-np.mean(scores))
                # if np.sqrt(-np.mean(scores))<best_score:
                #    best_C=C
                #    best_gamma=gamma
                #    best_score=np.sqrt(-np.mean(scores))
                scores_std.append(np.std(scores))
        # plt.semilogx(gammas,scores_mean,'.')
        # plt.plot(X[:,0],y-y_pred,'.')
        # plt.plot(X[:,1],y-y_pred,'.')
        # plt.plot(X[:,2],y-y_pred,'.')
        # plt.plot(X[:,3],y-y_pred,'.')
        plt.semilogx(C_s, np.array(scores_mean) / 1.0e6, ".")
        plt.show()
        # print best_C,best_gamma,best_score
        return
    #
    # model=SVR()
    # X=X[:,feature_index_1]
    # X=X[:,feature_index_0]
    # model.gamma=0.1
    # model.C=1.5e3
    # model=SVR()
    # model.C=1.38949549437
    model.C = 0.01
    # model.gamma=0.193069772888
    model.fit(X, y)
    # y_pred=model.predict(X)
#.........这里部分代码省略.........
开发者ID:dtamayo,项目名称:MachineLearning,代码行数:103,代码来源:svm.py


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