机器学习:Stacking融合模型

一.参考文献

  1. 知乎(必读):Kaggle机器学习之模型融合(stacking)心得
  2. MrLevo520的Blog:  Stacking Learning在分类问题中的使用
  3. Blog:Stacking Models for Improved Predictions
  4. Blog:KAGGLE ENSEMBLING GUIDE(注脚)
  5. Blog:如何在 Kaggle 首战中进入前 10%
  6. Github:[ikki407](https://github.com/ikki407)/stacking
  7. Paper:M. Paz Sesmero, Agapito I. Ledezma, Araceli Sanchis, “Generating ensembles of heterogeneous classifiers using Stacked Generalization,” WIREs Data Mining and Knowledge Discovery 5: 21-34 (2015) paper下载地址 密码: c7rf
  8. 神作:Stacked Generalization (Stacking)

二. 基本原理

              

三.代码实现

label为10类的一个多酚类问题

from sklearn.model_selection import KFold
from sklearn.model_selection import train_test_split
from sklearn.datasets import load_digits
import numpy as np
from sklearn.svm import SVC
from sklearn import metrics
from sklearn.ensemble import RandomForestClassifier
from sklearn import preprocessing
import pandas as pd


# 导入数据集切割训练与测试数据

data = load_digits()
data_D = preprocessing.StandardScaler().fit_transform(data.data)
data_L = data.target
data_train, data_test, label_train, label_test = train_test_split(data_D,data_L,random_state=1,test_size=0.7)

def SelectModel(modelname):

    if modelname == "SVM":
        from sklearn.svm import SVC
        model = SVC(kernel='rbf', C=16, gamma=0.125,probability=True)

    elif modelname == "GBDT":
        from sklearn.ensemble import GradientBoostingClassifier
        model = GradientBoostingClassifier()

    elif modelname == "RF":
        from sklearn.ensemble import RandomForestClassifier
        model = RandomForestClassifier()

    elif modelname == "XGBOOST":
        import xgboost as xgb
        model = xgb()

    elif modelname == "KNN":
        from sklearn.neighbors import KNeighborsClassifier as knn
        model = knn()
    else:
        pass
    return model

def get_oof(clf,n_folds,X_train,y_train,X_test):
    ntrain = X_train.shape[0]
    ntest =  X_test.shape[0]
    classnum = len(np.unique(y_train))
    kf = KFold(n_splits=n_folds,random_state=1)
    oof_train = np.zeros((ntrain,classnum))
    oof_test = np.zeros((ntest,classnum))


    for i,(train_index, test_index) in enumerate(kf.split(X_train)):
        kf_X_train = X_train[train_index] # 数据
        kf_y_train = y_train[train_index] # 标签

        kf_X_test = X_train[test_index]  # k-fold的验证集

        clf.fit(kf_X_train, kf_y_train)
        oof_train[test_index] = clf.predict_proba(kf_X_test)

        oof_test += clf.predict_proba(X_test)
    oof_test = oof_test/float(n_folds)
    return oof_train, oof_test

# 单纯使用一个分类器的时候
clf_second = RandomForestClassifier()
clf_second.fit(data_train, label_train)
pred = clf_second.predict(data_test)
accuracy = metrics.accuracy_score(label_test, pred)*100
print accuracy
# 91.0969793323

# 使用stacking方法的时候
# 第一级,重构特征当做第二级的训练集
modelist = ['SVM','GBDT','RF','KNN']
newfeature_list = []
newtestdata_list = []
for modelname in modelist:
    clf_first = SelectModel(modelname)
    oof_train_ ,oof_test_= get_oof(clf=clf_first,n_folds=10,X_train=data_train,y_train=label_train,X_test=data_test)
    newfeature_list.append(oof_train_)
    newtestdata_list.append(oof_test_)

# 特征组合
newfeature = reduce(lambda x,y:np.concatenate((x,y),axis=1),newfeature_list)    
newtestdata = reduce(lambda x,y:np.concatenate((x,y),axis=1),newtestdata_list)


# 第二级,使用上一级输出的当做训练集
clf_second1 = RandomForestClassifier()
clf_second1.fit(newfeature, label_train)
pred = clf_second1.predict(newtestdata)
accuracy = metrics.accuracy_score(label_test, pred)*100
print accuracy
# 96.4228934817
  1. 这里只是使用了两层的stacking,完成了一个基本的stacking操作,也可以同理构建三层,四层等等
  2. 对于第二级的输入来说,特征进行了变化(有一级分类器构成的判决作为新特征),所以相应的测试集也需要进行同样的转换,毕竟分类器学习的训练集已经不一样了,学习的内容肯定是无法适用于旧的测试集的,要清楚的是,当初我们是对整个Data集合随机分测试集和训练集的!
  3. 适用k-fold的方法,实质上使用了cv的思想,所以数据并没有泄露(没有用到测试集,用的是训练集中的hold-set),所以这个方法也叫做out-of-folds

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转载自blog.csdn.net/qq_34706955/article/details/81288276
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