如何在不破坏目标变量的情况下在插入符号中使用虚拟变量?
set.seed(5)
data <- ISLR::OJ
data<-na.omit(data)
dummies <- dummyVars( Purchase ~ ., data = data)
data2 <- predict(dummies, newdata = data)
split_factor = 0.5
n_samples = nrow(data2)
train_idx <- sample(seq_len(n_samples), size = floor(split_factor * n_samples))
train <- data2[train_idx, ]
test <- data2[-train_idx, ]
modelFit<- train(Purchase~ ., method='lda',preProcess=c('scale', 'center'), data=train)
将失败,因为缺少Purchase变量。如果我用data$Purchase <- ifelse(data$Purchase == "CH",1,0)
替换它,事先插入符号抱怨这不再是分类而是回归问题
答案 0 :(得分:4)
至少示例代码似乎在下面的评论中指出了一些问题。回答你的问题:
ifelse
的结果是整数向量,而不是因子,因此列车函数默认为回归要避免这些问题,请仔细检查对象的class
。
请注意preProcess
中的选项train()
会将预处理应用于所有数字变量,包括虚拟变量。下面的选项2避免这种情况,在调用train()
之前标准化数据。
set.seed(5)
data <- ISLR::OJ
data<-na.omit(data)
# Make sure that all variables that should be a factor are defined as such
newFactorIndex <- c("StoreID","SpecialCH","SpecialMM","STORE")
data[, newFactorIndex] <- lapply(data[,newFactorIndex], factor)
library(caret)
# See help for dummyVars. The function does not take a dependent variable and predict will give an error
# I don't include the target variable here, so predicting dummies on new data will drop unknown columns
# including the target variable
dummies <- dummyVars(~., data = data[,-1])
# I don't change the data yet to apply standardization to the numeric variables,
# before turning the categorical variables into dummies
split_factor = 0.5
n_samples = nrow(data)
train_idx <- sample(seq_len(n_samples), size = floor(split_factor * n_samples))
# Option 1 (as asked): Specify independent and dependent variables separately
# Note that dummy variables will be standardized by preProcess as per the original code
# Turn the categorical variabels to (unstandardized) dummies
# The output of predict is a matrix, change it to data frame
data2 <- data.frame(predict(dummies, newdata = data))
modelFit<- train(y = data[train_idx, "Purchase"], x = data2[train_idx,], method='lda',preProcess=c('scale', 'center'))
# Option 2: Append dependent variable to the independent variables (needs to be a data frame to allow factor and numeric)
# Note that I also shift the proprocessing away from train() to
# avoid standardizing the dummy variables
train <- data[train_idx, ]
test <- data[-train_idx, ]
preprocessor <- preProcess(train[!sapply(train, is.factor)], method = c('center',"scale"))
train <- predict(preprocessor, train)
test <- predict(preprocessor, test)
# Turn the categorical variabels to (unstandardized) dummies
# The output of predict is a matrix, change it to data frame
train <- data.frame(predict(dummies, newdata = train))
test <- data.frame(predict(dummies, newdata = test))
# Reattach the target variable to the training data that has been
# dropped by predict(dummies,...)
train$Purchase <- data$Purchase[train_idx]
modelFit<- train(Purchase ~., data = train, method='lda')