I am trying to automate much of the linear regression/model selection workflow. But I ran into some problems with the for loops; I surmise they're mostly issues with the dynamic variable naming.

I managed to automate the loop for the first step (regression modelling). Though ideally I would like the model to be stored in the following convention: lm.model, lm**1**.model, lm**2**.model ... but I'm not sure how to place the dynamic number within the variable string. I only managed to place it at the end:

```
lm.model[i] <- for (i in 1:5){
model_name <- paste("lm.model", i , sep = "")
assign(model_name, lm(Y ~ poly(X, i), data = training.dat))
}
```

But going by the current labelling convention, the next step does not work:

```
lmod.fit[i] <- for(i in 1:5){
fit_name <- paste("lmod.fit", i, sep = "")
assign(fit_name, predict(lm.model[i], newdata = training.dat))
}
```

It returns the error

```
Error in UseMethod("predict") : no applicable method for 'predict'
applied to an object of class "list"
```

In subsequent steps, I would also want to loop the pasting of the following parts:

```
x1 = lm.fit,
x2 = lm2.fit,
x3 = lm3.fit,
x4 = lm4.fit,
x5 = lm5.fit
```

```
c("x1", "x2", "x3", "x4", "x5")
```

But I am having trouble with just using the paste() function as the output is a single character string.

If there is a less cumbersome way to do all this, please let me know what else I can try!

`lm.model1`

,`lm.model2`

not a vector or a list`lm.model`

`ls()`

command that'll show you the objects that are in the .globalEnv