An improved frequency based agglomerative clustering algorithm for detecting distinct clusters on two dimensional dataset

Madheswaran, M. and Sreedhar, Kumar S. (2017) An improved frequency based agglomerative clustering algorithm for detecting distinct clusters on two dimensional dataset. Journal of Engineering and Technology Research, 9 (4). pp. 30-41. ISSN 2006-9790

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Abstract

In this study, a frequency based Dynamic Automatic Agglomerative Clustering (DAAC) is developed and presented. The DAAC scheme aims to automatically identify the appropriate number of divergent clusters over the two dimensional dataset based on count of distinct representative objects with higher intra thickness and lesser intra separation. The Distinct Representative Object Count (DROC) is introduced to automatically trace the count of distinct representative objects based on frequency of object occurrences. It also identifies the distinct number of highly comparative clusters based on the count of distinct representative objects through sequence of merging process. Experimental result shows that the DAAC is suitable for instinctively identifying the K distinct clusters over the different two dimensional datasets with higher intra thickness and lesser intra separation than existing techniques.

Item Type: Article
Subjects: GO STM Archive > Engineering
Depositing User: Unnamed user with email support@gostmarchive.com
Date Deposited: 03 May 2023 06:11
Last Modified: 19 Sep 2024 09:25
URI: http://journal.openarchivescholar.com/id/eprint/721

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