4.1 Article

Simple K-Medoids Partitioning Algorithm for Mixed Variable Data

期刊

ALGORITHMS
卷 12, 期 9, 页码 -

出版社

MDPI
DOI: 10.3390/a12090177

关键词

cluster; distance; partitioning; k-medoids; mixed variable data

资金

  1. Ditjen Sumberdaya IPTEK DIKTI [138.44/E4.4/2015]
  2. OeAD [ICM-2018-11915]
  3. Institute of Statistics, University of Natural Resources and Life Sciences

向作者/读者索取更多资源

A simple and fast k-medoids algorithm that updates medoids by minimizing the total distance within clusters has been developed. Although it is simple and fast, as its name suggests, it nonetheless has neglected local optima and empty clusters that may arise. With the distance as an input to the algorithm, a generalized distance function is developed to increase the variation of the distances, especially for a mixed variable dataset. The variation of the distances is a crucial part of a partitioning algorithm due to different distances producing different outcomes. The experimental results of the simple k-medoids algorithm produce consistently good performances in various settings of mixed variable data. It also has a high cluster accuracy compared to other distance-based partitioning algorithms for mixed variable data.

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