New scalable varied density clustering algorithm for large datasets

Ahmed Fahim, Abdel Badeeh Salem, Gunter Saake

Research output: Chapter in Book/Report/Conference proceedingChapterpeer-review

Abstract

Finding clusters in data is a challenging problem especially when the clusters are being of widely varied shapes, sizes, and densities. Herein a new scalable clustering technique which addresses all these issues is proposed. In data mining, the purpose of data clustering is to identify useful patterns in the underlying dataset. Within the last several years, many clustering algorithms have been proposed in this area of research. Among all these proposed methods, density clustering methods are the most important due to their high ability to detect arbitrary shaped clusters. Moreover these methods often show good noise-handling capabilities, where clusters are defined as regions of typical densities separated by low or no density regions. In this chapter, we aim at enhancing the well-known algorithm DBSCAN, to make it scalable and able to discover clusters from uneven datasets in which clusters are regions of homogenous densities. We achieved the scalability of the proposed algorithm by using the k-means algorithm to get initial partition of the dataset, applying the enhanced DBSCAN on each partition, and then using a merging process to get the actual natural number of clusters in the underlying dataset. This means the proposed algorithm consists of three stages. Experimental results using synthetic datasets show that the proposed clustering algorithm is faster and more scalable than the enhanced DBSCAN counterpart.

Original languageEnglish
Title of host publicationComputer Science Research and Technology
PublisherNova Science Publishers, Inc.
Pages163-179
Number of pages17
ISBN (Electronic)9781619428225
ISBN (Print)9781617286889
StatePublished - 1 Jan 2011
Externally publishedYes

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