When using the Bayesian classifier in matlab what’s the best way to avoid over fitting and inaccuracies?

I am using 1000 samples at the moment for the training data of which 750 are "normal" and 250 are "anomalous" (of one specific kind).

Has anyone found a good percentage of which works to train the classifier or does each problem require a specific amount of training data. I would assume the latter but I am struggling to figure out how I can improve the accuracy, what method could I use. Any example would be grateful.

Below is an example of what I am currently using:

```
training_data = data;
target_class = Book2(indX,:)
class = classify(test_data,training_data, target_class, 'diaglinear')
confusionmat(target_class,class)
% Display Results of Naive Bayes Classification
input = target_class;
% find the unique elements in the input
uniqueNames=unique(input)';
% use string comparison ignoring the case
occurrences=strcmpi(input(:,ones(1,length(uniqueNames))),uniqueNames(ones(length(input),1),:));
% count the occurences
counts=sum(occurrences,1);
%pretty printing
for i=1:length(counts)
disp([uniqueNames{i} ': ' num2str(counts(i))])
end
% output matching data
dataSample = fulldata(indX, :)
```