Kaggle实战入门:泰坦尼克号生还预测

Kaggle实战入门:泰坦尼克号生还预测(基础版)对机器学习的全流程进行了总体介绍。本文继续以泰坦尼克号生还预测为例,对机器学习中的特征工程、模型构建进行深入解读。

数据集及代码下载

1. 加载数据

由于针对训练数据集、测试数据集均要做空值填充、编码转换、离散化、归一化等处理,因此可以加载训练数据集、测试数据集对其统一进行处理。

train_file = r'datasets/train.csv'
test_file  = r'datasets/test.csv'
data = pd.read_csv(train_file,index_col='PassengerId')
data_sub = pd.read_csv(test_file,index_col='PassengerId') 
data_copy = data.copy()
del data_copy['Survived']
data_all = pd.concat([data_copy,data_sub]) #数据合并
data_all.info() #查看数据情况

输出

<class ‘pandas.core.frame.DataFrame’>
Int64Index: 1309 entries, 1 to 1309
Data columns (total 10 columns):
Pclass 1309 non-null int64
Name 1309 non-null object
Sex 1309 non-null object
Age 1046 non-null float64
SibSp 1309 non-null int64
Parch 1309 non-null int64
Ticket 1309 non-null object
Fare 1308 non-null float64
Cabin 295 non-null object
Embarked 1307 non-null object
dtypes: float64(2), int64(3), object(5)
memory usage: 112.5+ KB

2. 特征工程

(1)填充空值

需要填充空值的字段包括:AgeFareEmbarked 三个字段,其中使用众数填充EmbarkedAge</code>的空值 ,使用均值填充<code>FareAge的空值。

由于Name里有Mr,Mrs,Miss等称谓,可使用称谓对应的年龄的均值来填充Age的空值。

#填充Fare与Embark空值
Embarked_mode = data_all.Embarked.mode()[0] #计算众数
data_all.Embarked=data_all.Embarked.fillna(Embarked_mode) #众数填充
Fare_mean = data_all[data_all.Pclass == 3].Fare.mean() #计算均值
data_all.Fare=data_all.Fare.fillna(Fare_mean) #均值填充

#根据Title填充Age空值
def get_title(name):
    title_search = re.search("([A-Za-z]+)\.",name)
    if title_search:
        return title_search.group(1)
    return ""
data_all['Title'] = data_all.Name.apply(get_title)
for title in data_all[data_all.Age.isnull()].Title.unique():
    title_age_mean = data_all[data_all.Title == title].Age.mean()
    data_all.loc[data_all.Age.isnull()*data_all.Title == title,'Age'] = title_age_mean

(2)Age空值离散化

#年龄离散化
bins=[0,14,30,45,60,80]
cats=pd.cut(data_all.Age.as_matrix(),bins) 
data_all.Age=cats.codes

(3)Fare归一化

使用StandardScaler方法对Fare归一化处理

scaler=StandardScaler()
data_all.Fare=scaler.fit_transform(data_all.Fare.values.reshape(-1,1)) 

(4)形成新属性FamilySize

data_all['FamilySize'] = data_all.Parch + data_all.SibSp

(5)One-Hot Encoding

Sex_dummies = pd.get_dummies(data_all.Sex, prefix= 'Sex')
Pclass_dummies = pd.get_dummies(data_all.Pclass,prefix= 'Pclass')
Embarked_dummies = pd.get_dummies(data_all.Embarked,prefix= 'Embarked')

data_all['Cabin_null'] = np.array(data_all.Cabin.isnull()).astype(np.int32)
data_all['Cabin_nnull'] = np.array(data_all.Cabin.notnull()).astype(np.int32)

各个特征(属性)的处理总结如下

属性名 处理方式
Pclass 形成One-Hot向量
Name 未处理
Sex 形成One-Hot向量
Age 根据称谓填充空值后,离散化
SibSp 形成新属性FamilySize
Parch
Ticket 未处理
Fare 归一化
Cabin 形成One-Hot向量
Embarked 形成One-Hot向量

构建训练数据:

data_all = pd.concat([data_all, Sex_dummies, Pclass_dummies,Embarked_dummies], axis=1)

feature = [ 'Age','Fare','FamilySize','Cabin_null','Cabin_nnull','Sex_female','Sex_male','Pclass_1','Pclass_2','Pclass_3','Embarked_C','Embarked_Q','Embarked_S']

X = data_all.loc[data.index][feature] 
y = data.Survived

3. 模型训练

(1)组合分类器

组合分类器将多个不同类型的分类器(例如逻辑回归,SVM,随机森林)的预测结果进行组合,将多数分类器输出的结果作为最终的预测结果(hard voting classifier)。如果所有的分类器都能够预测类别的概率(拥有predict_proba方法),可将平均概率最高的结果作为最终的预测结果(soft voting classifier)通常比hard voting classifier效果好。

(2)参数优化

机器学习中的一项主要工作是参数优化(俗称“调参”)。sklearn提供了GridSearchCV方法,它网格式的自动遍历提供的参数组合,通过交叉验证确定最优化结果的参数(可通过best_params_属性查看)。

本文使用的分类器包括:随机森林、支持向量机、GBDT和神经网络。

from sklearn.model_selection import GridSearchCV, StratifiedKFold
kfold = StratifiedKFold(n_splits=10)

clf_RF = RF()
rf_param_grid = {"max_depth": [None],
              "max_features": [1, 3, 10],
              "min_samples_split": [2, 3, 10],
              "min_samples_leaf": [1, 3, 10],
              "bootstrap": [False],
              "n_estimators" :[100,300,500],
              "criterion": ["gini"]}
gsRF = GridSearchCV(clf_RF,param_grid = rf_param_grid, cv=kfold,scoring="accuracy", n_jobs= 4, verbose = 1)
gsRF.fit(X,y)
rf_best = gsRF.best_estimator_

clf_SVC = SVC(probability=True)
svc_param_grid = {'kernel': ['rbf'], 
                  'gamma': [ 0.001, 0.01, 0.1, 1],
                  'C': [1, 10, 50, 100,200,300, 1000]}
gsSVC = GridSearchCV(clf_SVC,param_grid = svc_param_grid, cv=kfold, scoring="accuracy", n_jobs= 4, verbose = 1)
gsSVC.fit(X,y)
svm_best = gsSVC.best_estimator_

clf_GB = GB()
gb_param_grid = {'loss' : ['deviance'],
              'n_estimators' : [100,300,500],
              'learning_rate': [0.1, 0.05, 0.01],
              'max_depth': [4, 8],
              'min_samples_leaf': [100,150],
              'max_features': [0.3, 0.1]}
gsGB = GridSearchCV(clf_GB,param_grid = gb_param_grid, cv=kfold, scoring="accuracy", n_jobs= 4, verbose = 1)
gsGB.fit(X,y)
gb_best = gsGB.best_estimator_

clf_MLP = MLP()
mlp_param_grid = {'hidden_layer_sizes' : [100,200,300,400,500],
              'activation' : ['relu'],
              'solver' : ['adam'],
              'learning_rate_init': [0.01, 0.001],
              'max_iter': [5000]}
gsMLP = GridSearchCV(clf_MLP,param_grid = mlp_param_grid, cv=kfold, scoring="accuracy", n_jobs= 4, verbose = 1)
gsMLP.fit(X,y)
mlp_best = gsMLP.best_estimator_

votingC = VotingClassifier(estimators=[('clf_GB', gb_best),  ('clf_RF', rf_best),('clf_SVC', svm_best),
('clf_MLP',mlp_best)],voting='soft', n_jobs=4)

votingC = votingC.fit(X, y)

4. 模型部署

使用predict方法预测,将生成的结果文件在Kaggle页面点击Submit Predictions进行提交,Kaggle会给出准确率和排名。

X_sub = data_all.loc[data_sub.index][feature]  #提取测试数据特征
y_sub = votingC.predict(X_sub) #使用模型预测数据标签
result = pd.DataFrame({'PassengerId':data_sub.index,'Survived':y_sub})
result.to_csv(r'D:\[DataSet]\1_Titanic\submission.csv', index=False)