An Evolutionary Algorithm with Crossover and Mutation for Model-Based Clustering
Abstract
An evolutionary algorithm (EA) is developed as an alternative to the EM
algorithm for parameter estimation in model-based clustering. This EA
facilitates a different search of the fitness landscape, i.e., the likelihood
surface, utilizing both crossover and mutation. Furthermore, this EA represents
an efficient approach to "hard" model-based clustering and so it can be viewed
as a sort of generalization of the k-means algorithm, which is itself
equivalent to a restricted Gaussian mixture model. The EA is illustrated on
several datasets, and its performance is compared to other hard clustering
approaches and model-based clustering via the EM algorithm.