您好,登錄后才能下訂單哦!
#過(guò)濾式特征選擇 #根據(jù)方差進(jìn)行選擇,方差越小,代表該屬性識(shí)別能力很差,可以剔除 from sklearn.feature_selection import VarianceThreshold x=[[100,1,2,3], [100,4,5,6], [100,7,8,9], [101,11,12,13]] selector=VarianceThreshold(1) #方差閾值值, selector.fit(x) selector.variances_ #展現(xiàn)屬性的方差 selector.transform(x)#進(jìn)行特征選擇 selector.get_support(True) #選擇結(jié)果后,特征之前的索引 selector.inverse_transform(selector.transform(x)) #將特征選擇后的結(jié)果還原成原始數(shù)據(jù) #被剔除掉的數(shù)據(jù),顯示為0 #單變量特征選擇 from sklearn.feature_selection import SelectKBest,f_classif x=[[1,2,3,4,5], [5,4,3,2,1], [3,3,3,3,3], [1,1,1,1,1]] y=[0,1,0,1] selector=SelectKBest(score_func=f_classif,k=3)#選擇3個(gè)特征,指標(biāo)使用的是方差分析F值 selector.fit(x,y) selector.scores_ #每一個(gè)特征的得分 selector.pvalues_ selector.get_support(True) #如果為true,則返回被選出的特征下標(biāo),如果選擇False,則 #返回的是一個(gè)布爾值組成的數(shù)組,該數(shù)組只是那些特征被選擇 selector.transform(x) #包裹時(shí)特征選擇 from sklearn.feature_selection import RFE from sklearn.svm import LinearSVC #選擇svm作為評(píng)定算法 from sklearn.datasets import load_iris #加載數(shù)據(jù)集 iris=load_iris() x=iris.data y=iris.target estimator=LinearSVC() selector=RFE(estimator=estimator,n_features_to_select=2) #選擇2個(gè)特征 selector.fit(x,y) selector.n_features_ #給出被選出的特征的數(shù)量 selector.support_ #給出了被選擇特征的mask selector.ranking_ #特征排名,被選出特征的排名為1 #注意:特征提取對(duì)于預(yù)測(cè)性能的提升沒(méi)有必然的聯(lián)系,接下來(lái)進(jìn)行比較; from sklearn.feature_selection import RFE from sklearn.svm import LinearSVC from sklearn import cross_validation from sklearn.datasets import load_iris #加載數(shù)據(jù) iris=load_iris() X=iris.data y=iris.target #特征提取 estimator=LinearSVC() selector=RFE(estimator=estimator,n_features_to_select=2) X_t=selector.fit_transform(X,y) #切分測(cè)試集與驗(yàn)證集 x_train,x_test,y_train,y_test=cross_validation.train_test_split(X,y, test_size=0.25,random_state=0,stratify=y) x_train_t,x_test_t,y_train_t,y_test_t=cross_validation.train_test_split(X_t,y, test_size=0.25,random_state=0,stratify=y) clf=LinearSVC() clf_t=LinearSVC() clf.fit(x_train,y_train) clf_t.fit(x_train_t,y_train_t) print('origin dataset test score:',clf.score(x_test,y_test)) #origin dataset test score: 0.973684210526 print('selected Dataset:test score:',clf_t.score(x_test_t,y_test_t)) #selected Dataset:test score: 0.947368421053 import numpy as np from sklearn.feature_selection import RFECV from sklearn.svm import LinearSVC from sklearn.datasets import load_iris iris=load_iris() x=iris.data y=iris.target estimator=LinearSVC() selector=RFECV(estimator=estimator,cv=3) selector.fit(x,y) selector.n_features_ selector.support_ selector.ranking_ selector.grid_scores_ #嵌入式特征選擇 import numpy as np from sklearn.feature_selection import SelectFromModel from sklearn.svm import LinearSVC from sklearn.datasets import load_digits digits=load_digits() x=digits.data y=digits.target estimator=LinearSVC(penalty='l1',dual=False) selector=SelectFromModel(estimator=estimator,threshold='mean') selector.fit(x,y) selector.transform(x) selector.threshold_ selector.get_support(indices=True) #scikitlearn提供了Pipeline來(lái)講多個(gè)學(xué)習(xí)器組成流水線,通常流水線的形式為:將數(shù)據(jù)標(biāo)準(zhǔn)化, #--》特征提取的學(xué)習(xí)器————》執(zhí)行預(yù)測(cè)的學(xué)習(xí)器,除了最后一個(gè)學(xué)習(xí)器之后, #前面的所有學(xué)習(xí)器必須提供transform方法,該方法用于數(shù)據(jù)轉(zhuǎn)化(如歸一化、正則化、 #以及特征提取 #學(xué)習(xí)器流水線(pipeline) from sklearn.svm import LinearSVC from sklearn.datasets import load_digits from sklearn import cross_validation from sklearn.linear_model import LogisticRegression from sklearn.pipeline import Pipeline def test_Pipeline(data): x_train,x_test,y_train,y_test=data steps=[('linear_svm',LinearSVC(C=1,penalty='l1',dual=False)), ('logisticregression',LogisticRegression(C=1))] pipeline=Pipeline(steps) pipeline.fit(x_train,y_train) print('named steps',pipeline.named_steps) print('pipeline score',pipeline.score(x_test,y_test)) if __name__=='__main__': data=load_digits() x=data.data y=data.target test_Pipeline(cross_validation.train_test_split(x,y,test_size=0.25, random_state=0,stratify=y))
以上就是Python進(jìn)行特征提取的示例代碼的詳細(xì)內(nèi)容,更多關(guān)于Python 特征提取的資料請(qǐng)關(guān)注億速云其它相關(guān)文章!
免責(zé)聲明:本站發(fā)布的內(nèi)容(圖片、視頻和文字)以原創(chuàng)、轉(zhuǎn)載和分享為主,文章觀點(diǎn)不代表本網(wǎng)站立場(chǎng),如果涉及侵權(quán)請(qǐng)聯(lián)系站長(zhǎng)郵箱:is@yisu.com進(jìn)行舉報(bào),并提供相關(guān)證據(jù),一經(jīng)查實(shí),將立刻刪除涉嫌侵權(quán)內(nèi)容。