Abstract
Few studies on text clustering for the Malay language have been conducted due to some limitations that need to be addressed. The purpose of this article is to compare the two clustering algorithms of k-means and k-medoids using Euclidean distance similarity to determine which method is the best for clustering documents. Both algorithms are applied to 1,000 documents pertaining to housebreaking crimes involving a variety of different modus operandi. Comparability results indicate that the k-means algorithm performed the best at clustering the relevant documents, with a 78% accuracy rate. K-means clustering also achieves the best performance for cluster evaluation when comparing the average within-cluster distance to the k-medoids algorithm. However, k-medoids perform exceptionally well on the Davis Bouldin index (DBI). Furthermore, the accuracy of k-means is dependent on the number of initial clusters, where the appropriate cluster number can be determined using the elbow method.
Author supplied keywords
Cite
CITATION STYLE
Mohemad, R., Muhait, N. N. M., Noor, N. M. M., & Othman, Z. A. (2022). Performance analysis in text clustering using k-means and k-medoids algorithms for Malay crime documents. International Journal of Electrical and Computer Engineering, 12(5), 5014–5026. https://doi.org/10.11591/ijece.v12i5.pp5014-5026
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.