2020
DOI: 10.3837/tiis.2020.03.004
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Approximate k values using Repulsive Force without Domain Knowledge in k-means

Abstract: The k-means algorithm is widely used in academia and industry due to easy and simple implementation, enabling fast learning for complex datasets. However, k-means struggles to classify datasets without prior knowledge of specific domains. We proposed the repulsive k-means (RK-means) algorithm in a previous study to improve the k-means algorithm, using the repulsive force concept, which allows deleting unnecessary cluster centroids. Accordingly, the RK-means enables to classifying of a dataset without domain kn… Show more

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“…K-means algorithm is interpretable and easy to implement, so we use K-means algorithm to cluster users and services [25]. However, it is well known that the clustering results of K-means will be different each time [26]. This problem is related to the distribution of sample points.…”
Section: Modeling User Groups and Service Groupsmentioning
confidence: 99%
“…K-means algorithm is interpretable and easy to implement, so we use K-means algorithm to cluster users and services [25]. However, it is well known that the clustering results of K-means will be different each time [26]. This problem is related to the distribution of sample points.…”
Section: Modeling User Groups and Service Groupsmentioning
confidence: 99%