Back to Search
Journal ArticleUnknown

A buffer-based online clustering for evolving data stream

Author Affiliations
Universiti Malaysia Pahang Al-Sultan Abdullah, University of Barishal
Published InInformation Sciences
Year2019
Citations46

Abstract

Data stream clustering plays an important role in data stream mining for knowledge extraction. Numerous researchers have recently studied density-based clustering algorithms due to their capability to generate arbitrarily shaped clusters. However, most of the algorithms are either fully offline, hybrid online/offline, or cannot handle the property of evolving data stream. Recently, a fully online clustering algorithm for evolving data stream called CEDAS was proposed. However, similar to other density-based clustering algorithms, CEDAS requires predefining the global optimal radius of micro-clusters, which is a difficult task; in addition, an erroneous choice deteriorates cluster performance. Moreover, the algorithm ignores the presence of temporarily irrelevant micro-clusters, which may be relevant in the future. In this study, we present a fully online density-based…
View at Publisher

BORR does not host full-text PDFs. The button above takes you to the original publisher.