Clustering: finding patterns in the darkness

Article


Menéndez, H. 2021. Clustering: finding patterns in the darkness. Open Journal of Machine Learning. 1 (1), pp. 1-28. https://doi.org/10.46723/ojml.v1i1.4
TypeArticle
TitleClustering: finding patterns in the darkness
AuthorsMenéndez, H.
Abstract

Machine learning is changing the world and fuelling Industry 4.0. These statistical methods focused on identifying patterns in data to provide an intelligent response to specific requests. Although understanding data tends to require expert knowledge to supervise the decision-making process, some techniques need no supervision. These unsupervised techniques can work blindly but they are based on data similarity. One of the most popular areas in this field is clustering. Clustering groups data to guarantee that the clusters’ elements have a strong similarity while the clusters are distinct among them. This field started with the K-means algorithm, one of the most popular algorithms in machine learning with extensive applications. Currently, there are multiple strategies to deal with the clustering problem. This review introduces some of the classical algorithms, focusing significantly on algorithms based on evolutionary computation, and explains some current applications of clustering to large datasets.

KeywordsClustering K-means Expectation-Maximization Spectral Clustering Evolutionary Computation Online Clustering
PublisherEndless Science Ltd
JournalOpen Journal of Machine Learning
Publication dates
Print10 Dec 2021
Publication process dates
Deposited06 Jan 2022
Output statusPublished
Publisher's version
License
Copyright Statement

This work is licensed under a Creative Commons Attribution-NonCommercial-ShareAlike 4.0 International License.

Web address (URL)https://endsci.net/ojml/article/view/4
Digital Object Identifier (DOI)https://doi.org/10.46723/ojml.v1i1.4
LanguageEnglish
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