DRIM: Deviation Ratio Index Based on Medoids

., Kariyam and Effendie, Adhitya Ronnie (2023) DRIM: Deviation Ratio Index Based on Medoids. In: Advances and Challenges in Science and Technology Vol. 5. B P International, pp. 99-126. ISBN 978-81-966449-4-9

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Abstract

A technique for estimating the number of clusters in a dataset that is flexible for various types and sizes of data, adaptive to any clustering methods, and easy to calculate is discussed in this chapter. A Deviation Ratio Index based on Medoids (DRIM) is the approach we propose. The object distance to the final
-medoids is utilized to calculate the DRIM technique. The block-based
-medoids algorithm (Block-KM) and the
-medoids constructed using the variance of distance (VarD-KM) were applied to obtain these final medoids. Before running the Block-KM and VarD-KM, we select a specific transformation for some datasets. We use ten real datasets to validate the DRI. These data include Vote, Soybean (small), Primary Tumor, Breast Cancer, Ionsphere, Iris, Wine, Zoo, Heart Disease Case 2, and Credit Approval data. The experimental results show that the DRIM technique predicts the number of clusters for the ten real datasets more precisely than other methods. Three types of artificial data to evaluate the proposed method resulted in 76.67% of experiments predicting correctly. Applying the new approach to grouping 62 universities in Indonesia based on data on human resources, education, research, organization, infrastructure, and cooperation produces three easily interpreted groups.

Item Type: Book Section
Subjects: Open Research Librarians > Multidisciplinary
Depositing User: Unnamed user with email support@open.researchlibrarians.com
Date Deposited: 20 Oct 2023 06:43
Last Modified: 20 Oct 2023 06:43
URI: http://stm.e4journal.com/id/eprint/1834

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