I am trying to use the **outer** function with **predict** in some classification code in R. For ease, we will assume in this post that we have two vectors named **alpha** and **beta** each containing ONLY 0 and 1. I am looking for a simple yet efficient way to pass all combinations of **alpha** and **beta** to **predict**.

I have constructed the code below to mimic the lda function from the MASS library, so rather than "lda", I am using "classifier". It is important to note that the prediction method within **predict** depends on an (**alpha**, **beta**) pair.

Of course, I could use a nested for loop to do this, but I am trying to avoid this method.

Here is what I would like to do ideally:

```
alpha <- seq(0, 1)
beta <- seq(0, 1)
classifier.out <- classifier(training.data, labels)
outer(X=alpha, Y=beta, FUN="predict", classifier.out, validation.data)
```

This is a problem because **alpha** and **beta** are not the first two parameters in **predict**.

So, in order to get around this, I changed the last line to

```
outer(X=alpha, Y=beta, FUN="predict", object=classifier.out, data=validation.data)
```

Note that my validation data has 40 observations, and also that there are 4 possible pairs of **alpha** and **beta**. I get an error though saying

```
dims [product 4] do not match the length of object [40]
```

I have tried a few other things, some of which work but are far from simple. Any suggestions?