A Model for Optimization of K-means Clustering Accuracy using Big Data Analytics
Primary motivation towards this study was to obtain better clustering results from K-means clustering algorithm. Several studies had provided relevant findings showing normal clustering algorithm and scope of improvements regarding clustering accuracy. With the aim to increase clustering accuracy, a conceptual notion of Input Dataset Splitting Method is utilized in K-means clustering algorithm. Depending on the Database Partitioning concepts, an improved clustering technique is proposed in this study for obtaining more accurate and more precise clustering outcomes. The contribution from this study could be essential in terms of topic-modelled data and clustering datasets.