I am trying to find a good classification approach for my problem of classifying multiple customer records with missing, truncated or wrong data values into different customer categories i.e. to classify one or more customer record and see if it belongs to the same customer or to a different customer. Why should I use a neural network for this and not a bayesian net? My professor said that a neural network is the best approach to it.
It depends very much on the type of data you are trying to classify. Neural networks are typically good at continuous data whereas bayesian nets tend to work better with discrete data. Of course, continuous data can be discretised by putting it into buckets, but that's another layer of complexity that you may not need.
Both approaches (theoretically) cope well with missing, truncated and incorrect data.
I'd suggest that you ask your professor why they think a neural network would be a better approach.