Normal Mixture Model-Based Clustering of Data Using Genetic Algorithm
Abstract
In this study, a new algorithm was developed for clustering multivariate big data. Normal mixture distributions are used to determine the partitions of variables. Normal mixture models obtained from the partitions of
variables are generated using Genetic Algorithms (GA). Each partition in the
variables corresponds to a clustering center in the normal mixture model. The
best model that fits the data structure from normal mixture models is obtained by
using the information criteria obtained from normal mixture distributions.