I have a dataset 162 x 152. What I want to do is use stepwise regression, incorporating cross validation on the dataset to create a model and to test how accurate that model is.

```
ID RT (seconds) 76_TI2 114_DECC 120_Lop 212_PCD 236_X3Av
4281 38 4.086 1.2 2.322 0 0.195
4952 40 2.732 0.815 1.837 1.113 0.13
4823 41 4.049 1.153 2.117 2.354 0.094
3840 41 4.049 1.153 2.117 3.838 0.117
3665 42 4.56 1.224 2.128 2.38 0.246
3591 42 2.96 0.909 1.686 0.972 0.138
```

This is part of the dataset I have. I want to construct a model where my Y variable is RT(seconds) and all my variables (my predictors) are all the other 151 variables in my dataset. I was told to use the superleaner package, and algorithm for that is:-

```
test <- CV.SuperLearner(Y = Y, X = X, V = 10, SL.library = SL.library,
verbose = TRUE, method = "method.NNLS")
```

The problem is that I'm still rather new to R. The main way in which I've been reading my data in and performing other forms of machine learning algorithms onto my data is by doing the following:-

```
mydata <- read.csv("filepathway")
fit <- lm(RT..seconds~., data=mydata)
```

So how do I go about separating the RT seconds column from the input of my data so that I can input the things as an X and Y dataframe? i.e something along the lines of:-

```
mydata <- read.csv("filepathway")
mydata$RT..seconds. = Y #separating my Y response variable
Alltheother151variables = X #separating all of my X predictor variables (all 151 of them)
SL.library <- c("SL.step")
test <- CV.SuperLearner(Y (i.e RT seconds column), X (all the other 151 variables that corresponds to the RT values), V = 10, SL.library = SL.library,
verbose = TRUE, method = "method.NNLS")
```

I hope this all makes sense. Thanks!