I have a dataset as follows-

```
Transaction.Date Transaction
26/05/2014 Dr.
26/05/2014 Dr.
22/05/2014 Cr.
21/05/2014 Dr.
17/05/2014 Dr.
12/5/2014 Dr.
6/5/2014 Dr.
3/5/2014 Dr.
3/5/2014 Dr.
1/5/2014 Cr.
29/04/2014 Cr.
26/04/2014 Dr.
25/04/2014 Dr.
19/04/2014 Dr.
10/4/2014 Cr.
31/03/2014 Dr.
31/03/2014 Cr.
```

I want to run neuralnet prediction on the above set of data but I have one as Date type and other as numeric and while running

*I have converted Transaction Dr.(0) and Cr.(1)*

```
output <- neuralnet(Transaction ~ Transaction.Date,trainset,hidden = 5,threshold = 0.1)
```

naturally its throwing error as Date is not numeric type-

```
Error in neurons[[i]] %*% weights[[i]] :
requires numeric/complex matrix/vector arguments
```

One way I figured out is I separated each date field ie Day-MONTH-YEAR as a separate column and then I ran the formula-

```
Transaction ~ date.day+date.month+date.year
```

Is there any other better way I can derive from the data above to run in neural network in R?