I have a large dataset available with 10 different inputs and 1 output. All the outputs and the input are discreet (LOW, MEDIUM, HIGH). I was thinking about creating a neural network for this problem, however when I am designing the network to have 3 different outputs (LOW, MEDIUM, HIGH) and use a softmax neuron I basically get a 'probability'. Am I correct?
That made me think that it is maybe better to try a Naive Bayes classifier, and thus ignoring the possible correlations between the input variables, however in a large dataset Naive Bayes shows promising results.
Is there a reason to pick Neural Networks over Bayes in this case? What is the reason to pick Neural Networks when you want a probability as output (using a softmax function in Neural Networks).