The parity function is a function from a vector of n bits and outputs 1 if the sum is odd and 0 otherwise. This can be viewed as a classification task, where the n input are the features.

Is there any machine learning algorithm which would be able to learn this function? Clearly random decision forests would not succeed, since any strict subset of features has no predictive power. Also, I believe no neural network of a fixed depth would succeed, since computing the parity function is not in the complexity class AC0.

n, wouldn't a two-layer perceptron with a sufficiently large hidden layer be enough? – larsmans Feb 28 '12 at 16:50