In this paper, we introduce a new concept of enhancement and relaxation to discover features in input patterns in competitive learning. We have introduced mutual information to realize competitive
processes. Because mutual information is an average over all input patterns and competitive units, it cannot be used to detect
detailed feature extraction. To examine in more detail how a network is organized, we introduce the enhancement and relaxation
of competitive units through some elements in a network. With this procedure, we can estimate how the elements are organized
with more detail. We applied the method to a simple artificial data and the famous Iris problem to show how well the method
can extract the main features in input patterns. Experimental results showed that the method could more explicitly extract
the main features in input patterns than the conventional techniques of the SOM.