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Abstract Clustering is a process to group data into several clusters or groups so the data in one cluster has a maximum level of similarity and data between clusters has a minimum similarity. X-means clustering is used to solving one of the main weaknesses of K-means clustering need for prior knowledge about the number of clusters (K). In this method, the actual value of K is estimated in a way that is not monitored and only based on the data set itself. The results of the study using the X-Means algorithm with the Davies-Bouldin Index evaluation to determine the number of Centroid clusters is done by modifying the X-Means method to do some centroid determination to get 11 iterations. The result is produces cluster members that have a good level of similarity with other data. In determining the number of centroids, use the Davies-Bouldin Index method where testing with 2 clusters has a minimum value with a DBI value close to 0.
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M Mughnyanti
Syahril Efendi
Muhammad Zarlis
Universitas Sumatera Utara
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Mughnyanti et al. (Wed,) studied this question.
synapsesocial.com/papers/69df00abb1b9c2de2006b06d — DOI: https://doi.org/10.1088/1757-899x/725/1/012128