# Neural Network 0 vs -1

I have seen a few times people using `-1` as opposed to `0` when working with neural networks for the input data. How is this better and does it effect any of the mathematics to implement it?

Edit: Using feedforward and back prop

Edit 2: I gave it a go but the network stopped learning so I assume the maths would have to change somewhere?

Edit 3: Finally found the answer. The mathematics for binary is different to bipolar. See my answer below.

Recently found that the sigmoid and sigmoid derivative formula needs to change if using bipolar over binary.

Bipolar Sigmoid Function: `f(x) = -1 + 2 / (1 + e^-x)`

Bipolar Sigmoid Derivative: `f’(x) = 0.5 * (1 + f(x)) * (1 – f(x) )`

• Look at this link for reference: aforgenet.com/framework/docs/html/… Commented Dec 25, 2012 at 22:21
• thanks was tring to fin why my net wouldnt train with bipolar targets, realise signoid was not bipolar but couldnt find the derivative, working great now. Commented Dec 2, 2013 at 1:25
• For completion: To extend from normal `f(x)=sigmoid` to `[a,b] sigmoid` (`[-1,+1]` in our case), take `g(x) = (b-a)f(x) + a` (becomes `2f(x) - 1` in our case) Commented Jul 1, 2017 at 12:53

It's been a long time, but as I recall, it has no effect on the mathematics needed to implement the network (assuming you're not working with a network type that for some reason limits any part of the process to non-negative values). One of the advantages is that it makes a larger distinction between inputs, and helps amplify the learning signal. Similarly for outputs.

Someone who's done this more recently probably has more to say (like about whether the 0-crossing makes a difference; I think it does). And in reality some of this depends on exactly what type of neural network you're using. I'm assuming you're talking about backprop or a variant thereof.

• Yep using backprop. I can understand that the weighted input would be different (ie if the weight was 1.84, input of 0 would result in 0 and -1 would result in -1.84) but I don't know if it's better or not or why. Commented Feb 2, 2010 at 16:20
• It does have an effect on the mathematics. Commented Mar 9, 2010 at 7:38

The network learns quickly using -1/1 inputs compared to 0/1. Also, if you use -1/1 inputs, 0 means "unknown entry/noise/does not matter". I would use -1/1 as input of my neural network.

• But do I have to change anything or should it work by just replacing 0 with -1. As I said, I gave it a go but I got weird results. The MSE kept outputting the same number through each epoch. Commented Feb 3, 2010 at 7:02