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| dc.rights.license |
CC BY |
eng |
| dc.contributor.author |
Seal, Ayan |
cze |
| dc.contributor.author |
Karlekar, Aditya |
cze |
| dc.contributor.author |
Krejcar, Ondřej |
cze |
| dc.contributor.author |
Herrera-Viedma, Enrique |
cze |
| dc.date.accessioned |
2025-12-05T10:39:27Z |
|
| dc.date.available |
2025-12-05T10:39:27Z |
|
| dc.date.issued |
2021 |
eng |
| dc.identifier.issn |
1989-1660 |
eng |
| dc.identifier.uri |
http://hdl.handle.net/20.500.12603/1367 |
|
| dc.description.abstract |
The size of data that we generate every day across the globe is undoubtedly astonishing due to the growth of the Internet of Things. So, it is a common practice to unravel important hidden facts and understand the massive data using clustering techniques. However, non-linear relations, which are essentially unexplored when compared to linear correlations, are more widespread within data that is high throughput. Often, non-linear links can model a large amount of data in a more precise fashion and highlight critical trends and patterns. Moreover, selecting an appropriate measure of similarity is a well-known issue since many years when it comes to data clustering. In this work, a non-Euclidean similarity measure is proposed, which relies on non-linear Jeffreys-divergence (JS). We subsequently develop c-means using the proposed JS (J-c-means). The various properties of the JS and J-c-means are discussed. All the analyses were carried out on a few real-life and synthetic databases. The obtained outcomes show that J-c-means outperforms some cutting-edge c-means algorithms empirically. |
eng |
| dc.format |
p. 141-149 |
eng |
| dc.language.iso |
eng |
eng |
| dc.publisher |
UNIV INT RIOJA-UNIR |
eng |
| dc.relation.ispartof |
INTERNATIONAL JOURNAL OF INTERACTIVE MULTIMEDIA AND ARTIFICIAL INTELLIGENCE, volume 7, issue: 2 |
eng |
| dc.subject |
C-mean |
eng |
| dc.subject |
Clustering |
eng |
| dc.subject |
Convergence |
eng |
| dc.subject |
Jeffreys-Divergence |
eng |
| dc.subject |
Jeffreys-Similarity Measure |
eng |
| dc.title |
Performance and Convergence Analysis of Modified C-Means Using Jeffreys-Divergence for Clustering |
eng |
| dc.type |
article |
eng |
| dc.identifier.obd |
43878281 |
eng |
| dc.identifier.wos |
000724919200014 |
eng |
| dc.identifier.doi |
10.9781/ijimai.2021.04.009 |
eng |
| dc.publicationstatus |
postprint |
eng |
| dc.peerreviewed |
yes |
eng |
| dc.source.url |
https://www.ijimai.org/journal/sites/default/files/2021-11/ijimai7_2_13_0.pdf |
cze |
| dc.relation.publisherversion |
https://www.ijimai.org/journal/sites/default/files/2021-11/ijimai7_2_13_0.pdf |
eng |
| dc.rights.access |
Open Access |
eng |
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