It's possible to create a neural network without a bias neuron... it would work just fine, but for more information I would recommend you see the answers to this question:

Role of Bias in Neural Networks

**Update:**
the role of the bias neuron in the neural net that attempts to ~~solve~~ model XOR is to minimize the size of the neural net. Usually, for "primitive" (not sure if this is the correct term) logic functions such as `AND`

, `OR`

, `NAND`

, etc, you are trying to create a neural network with 2 input neurons, 2 hidden neurons and 1 output neuron. This can't be done for `XOR`

because the simplest way you can model an `XOR`

is with two `NAND`

s:

You can consider `A`

and `B`

as your input neurons, the gate in the middle is your "bias" neuron, the two gates following are your "hidden" neurons and finally you have the output neuron. You can solve `XOR`

without having a bias neuron, but it would require that you increase the number of hidden neurons to a minimum of 3 hidden neurons. In this case, the 3rd neuron essentially acts as a bias neuron. Here is another question that discusses the bias neuron with regards to `XOR`

: XOR problem solvable with 2x2x1 neural network without bias?