如何解决“无法将类强制转换为data.frame?

问题描述 投票:0回答:2

第20行出现问题:x3 <- lm(Salary ~ ...

as.data.frame.default(data)中的错误:无法将类'c(“ train”,“ train.formula”)'强制转换为data.frame

如何解决?

attach(Hitters)
Hitters

library(caret)
set.seed(123)
# Define training control
set.seed(123) 
train.control <- trainControl(method = "cv", number = 10)
# Train the model
x2 <- train(Salary ~., data = x, method = "lm",
               trControl = train.control)
# Summarize the results
print(x)
x3 <- lm(Salary ~ poly(AtBat,3) + poly(Hits,3) + poly(Walks,3) + poly(CRuns,3) + poly(CWalks,3) + poly(PutOuts,3), data = x2)
summary(x3)
MSE = mean(x3$residuals^2)
print("Mean Squared Error: ")
print(MSE)
r machine-learning regression training-data supervised-learning
2个回答
0
投票

嗨,caret :: train()返回与训练模型相关的列表。在您的情况下,应将data =设置为data.frame而不是caret :: train()返回的对象。另外,如果您使用的是caret :: train(),则不需要lm(),您只需从caret拟合整个模型并执行x2即可得到结果性能指标(例如,MSE,即RMSE ^ 2)。


0
投票

首先,如@dcarlson所述,您应该定义x。其次,x3不返回数据帧。如果您运行

str(x2)

您将看到在lm函数中使用的所有元素都是称为trainingData的数据框的一部分。因此,如果您打算使用lm函数,请将其用作lm函数NOT x2中的数据源。我已经在下面重写了您的代码。

PS,我距离R专家还很远,所以如果有人想用这个答案射击,那就继续吧,我总是愿意学习;)

attach(Hitters)
Hitters

library(caret)
set.seed(123)

# Define training control
set.seed(123) 
train.control <- trainControl(method = "cv", number = 10)

# Train the model
x2 <- train(Salary ~., data = x, method = "lm", trControl = train.control)

# Summarize the results
print(x2)
# str(x2) # $trainingData data.frame

x2$trainingData[["AtBat"]]
m <- x2$trainingData

x3 <- lm(Salary ~ poly(AtBat,3) + poly(Hits,3) + poly(Walks,3) + poly(CRuns,3) + poly(CWalks,3) + poly(PutOuts,3), data = m)
summary(x3)
MSE = mean(x3$residuals^2)
cat("Mean Squared Error: ", MSE) # use cat to concatenate text and variable value in one line
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