Title of article :
Improved point center algorithm for K-Means clustering to increase software defect prediction
Author/Authors :
Annisa, Riski Computer Science Master Program of Sekolah Tinggi Manajemen Informatika dan Komputer Nusa Mandiri - Jakarta, Indonesia , Rosiyadi, Didi Computer Science Master Program of Sekolah Tinggi Manajemen Informatika dan Komputer Nusa Mandiri - Jakarta, Indonesia , Riana, Dwiza Computer Science Master Program of Sekolah Tinggi Manajemen Informatika dan Komputer Nusa Mandiri - Jakarta, Indonesia
Abstract :
he k-means is a clustering algorithm that is often and easy to use. This algorithm is susceptible to randomly chosen centroid points so that it cannot produce optimal results. This research aimed to improve the k-means algorithm’s performance by applying a proposed algorithm called point center. The proposed algorithm overcame the random centroid value in k-means and then applied it to predict software defects modules’ errors. The point center algorithm was proposed to determine the initial centroid value for the k-means algorithm optimization. Then, the selection of X and Y variables determined the cluster center members. The ten datasets were used to perform the testing, of which nine datasets were used for predicting software defects. The proposed center point algorithm showed the lowest errors. It also improved the k-means algorithm’s performance by an average of 12.82% cluster errors in the software compared to the centroid value obtained randomly on the simple k-means algorithm. The findings are beneficial and contribute to developing a clustering model to handle data, such as to predict software defect modules more accurately.
Keywords :
Software defect , Cluster Centroid , K-Means , Algorithm
Journal title :
International Journal of Advances in Intelligent Informatics