This paper proposes a genetic-based K-means(GK) algorithm for selection of the k value and selection of feature variables by minimizing an associated objective function. The algorithm combines the advantage of genetic algorithm(GA) and K-means to search the subspace thoroughly. Therefore, our algorithm converges globally. A weighting function is then introduced to initialize the parameters of the algorithm. The experiments on a synthetic dataset and a real dataset shows that (i) GK outperforms Kmeans since GK achieves the minimal value of the objective function and (ii) GK with the weighting function performs better than GK.
Citation:
Zhiwen Yu, Hau-San Wong, "Genetic-based K-means algorithm for selection of feature variables," icpr, vol. 2, pp.744-747, 18th International Conference on Pattern Recognition (ICPR'06) Volume 2, 2006