I'm trying to use R caret to perform cross-validation of my linear regression models. In some cases I want to force the intercept through 0. I have tried the following, using the standard lm syntax:

```
regressControl <- trainControl(method="repeatedcv",
number = 4,
repeats = 5
)
regress <- train(y ~ 0 + x,
data = myData,
method = "lm",
trControl = regressControl)
Call:
lm(formula = .outcome ~ ., data = dat)
Coefficients:
(Intercept) x
-0.0009585 0.0033794 `
```

This syntax seems to work with the standard 'lm' function but not within the caret package. Any suggestions?

```
test <- lm(y ~ 0 + x,
data = myData)
Call:
lm(formula = y ~ 0 + x, data = myData)
Coefficients:
x
0.003079
```

`y ~ -1 + x`

to explicitly exclude the intercept.`caret`

's implementation makes it difficult without editing the source code.`scale`

all your data, your intercept will become [effectively] zero.