Optimizing Classifiers for Handwritten Digits by Genetic Algorithms

We present the first large real-world application for the neural network optimizing genetic algorithm Enzo. Nets had several thousands links and the training data up to over 200,000 patterns. We evolved nets for a classification task that have an order of magnitude free parameters less than commonly used polynomial classifiers while maintaining the same performance.