Abstract
This paper introduces an approach to generate new patterns for improved neural network training. The patterns are based on the information obtained by means of a rule extraction approach. In this way, the training process is reiterated using the most informative patterns. Incorporating the high quality rules obtained from a decision tree further enhances the data generation process. Results indicate that the approach results in improved generalization, especially in difficult to learn domains.