**Description**

Given a dataset that has 10 sequences - a sequence corresponds to a day of stock value recordings - where each constitutes 50 sample recordings of stock values that are separated by 5 minute intervals starting from the morning or 9:05 am. However, there is one extra recording (the 51th sample) that is only available in the training set which is 2 hours later, not 5 minutes, than the last recorded sample in the 50 sample recordings. That 51th sample is required to be predicted for the testing set where the first 50 samples are also given.

I am using the `pybrain`

recurrent neural network for this problem that groups sequences together, and the label (or commonly known as the target `y`

) of each sample `x_i`

is the sample of the next time step `x_(i+1)`

- a typical formulation in time series prediction.

**Example**

```
A sequence for one day is something like:
Signal id Time value
1 - 9:05 - 23
2 - 9:10 - 31
3 - 9:15 - 24
... - ... - ...
50 - 13:15 - 15
Below is the 2 hour later label 'target' given for the training set
and is required to be predicted for the testing set
51 - 15:15 - 11
```

**Question**

Now that my recurrent neural network (RNN) has trained on these 10 sequences, if it confronts another sequence, how would I use the `RNN`

to predict the stock values `2 hours`

after the last sample in the sequence ?

Please note that I also have "2 hours later than the last sample stock values" for each of the training sequences but I am not sure how to incorporate that in training the `RNN`

since it expects identical time intervals between samples. Thanks!

`How do you predict the next sequence output`

? – jorgenkg Sep 8 '13 at 16:49`RNN`

with a signal that is of different delta than others and how to predict that signal given the first 50 signals. – Curious Sep 9 '13 at 3:34