zap*_*008 4 statistics partitioning r factors categorical-data
我写了一个小函数来将我的数据集划分为训练和测试集.但是,在处理因子变量时遇到了麻烦.在我的代码的模型验证阶段,如果模型是在没有来自每个级别的因子的表示的数据集上构建的,那么我会收到错误.如何修复此partition()函数以包含来自因子变量的每个级别的至少一个观察?
test.df <- data.frame(a = sample(c(0,1),100, rep = T),
b = factor(sample(letters, 100, rep = T)),
c = factor(sample(c("apple", "orange"), 100, rep = T)))
set.seed(123)
partition <- function(data, train.size = .7){
train <- data[sample(1:nrow(data), round(train.size*nrow(data)), rep= FALSE), ]
test <- data[-as.numeric(row.names(train)), ]
partitioned.data <- list(train = train, test = test)
return(partitioned.data)
}
part.data <- partition(test.df)
table(part.data$train[,'b'])
table(part.data$test[,'b'])
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编辑 - 使用'caret'包和createDataPartition()的新函数:
partition <- function(data, factor=NULL, train.size = .7){
if (("package:caret" %in% search()) == FALSE){
stop("Install and Load 'caret' package")
}
if (is.null(factor)){
train.index <- createDataPartition(as.numeric(row.names(data)),
times = 1, p = train.size, list = FALSE)
train <- data[train.index, ]
test <- data[-train.index, ]
}
else{
train.index <- createDataPartition(factor,
times = 1, p = train.size, list = FALSE)
train <- data[train.index, ]
test <- data[-train.index, ]
}
partitioned.data <- list(train = train, test = test)
return(partitioned.data)
}
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尝试插入包,特别是功能createDataPartition().它应该完全符合您的需求,可在CRAN上获得,主页在这里:
我提到的函数部分是我在网上找到的一些代码,然后我稍微修改它以更好地处理边缘情况(比如当你要求样本大小大于集合或子集时).
stratified <- function(df, group, size) {
# USE: * Specify your data frame and grouping variable (as column
# number) as the first two arguments.
# * Decide on your sample size. For a sample proportional to the
# population, enter "size" as a decimal. For an equal number
# of samples from each group, enter "size" as a whole number.
#
# Example 1: Sample 10% of each group from a data frame named "z",
# where the grouping variable is the fourth variable, use:
#
# > stratified(z, 4, .1)
#
# Example 2: Sample 5 observations from each group from a data frame
# named "z"; grouping variable is the third variable:
#
# > stratified(z, 3, 5)
#
require(sampling)
temp = df[order(df[group]),]
colsToReturn <- ncol(df)
#Don't want to attempt to sample more than possible
dfCounts <- table(df[group])
if (size > min(dfCounts)) {
size <- min(dfCounts)
}
if (size < 1) {
size = ceiling(table(temp[group]) * size)
} else if (size >= 1) {
size = rep(size, times=length(table(temp[group])))
}
strat = strata(temp, stratanames = names(temp[group]),
size = size, method = "srswor")
(dsample = getdata(temp, strat))
dsample <- dsample[order(dsample[1]),]
dsample <- data.frame(dsample[,1:colsToReturn], row.names=NULL)
return(dsample)
}
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