I am trying to implement a recurrent neural network and trying to get it to learn an XOR function as a petty example.

As it is a recurrent network, I thought it could be good to have it work with just one input unit in order to see how well it does remembering its previous state; that is, implementing the XOR function based on a sequential input:

```
INPUT(t-1) = 0
INPUT(t) = 1
OUTPUT(t) = 1
```

or

```
INPUT(t-1) = 1
INPUT(t) = 1
OUTPUT(t) = 0
```

So my input training data be presented one bit at a time in this order:

```
inputs = { 0, 0, 1, 1, 0 }
```

and the corresponding target output

```
targets = { 0, 0, 1, 0, 1 }.
```

But it is not learning and, even though I know there can be many reasons for that, I was wondering that maybe I did not define properly my dataset and thus I wouldn't be presenting the right problem to my network. I come here then looking for ideas on what could be a right training set for a supervised learning of a "sequential" XOR function.

The implementation I am working on is similar to the Elman RNN, if you need any details on it, please ask.