2021
DOI: 10.1088/1742-6596/1979/1/012015
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An Effective Analysis of Data Clustering using Distance-based K- Means Algorithm

Abstract: Real-world data sets are regularly provides different and complementary features of information in an unsupervised way. Different types of algorithms have been proposed recently in the genre of cluster analysis. It is arduous to the user to determine well in advance which algorithm would be the most suitable for a given dataset. Techniques with respect to graphs are provides excellent results for this task. However, the existing techniques are easily vulnerable to outliers and noises with limited idea about ed… Show more

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Cited by 2 publications
(2 citation statements)
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“…In physic, abstract objects or object classes with high similarity are clustering, and the collection of data objects is a cluster. The similarity between this object and objects in the same cluster is high, which is quite different from objects in other clusters [ 16 ]. It can be regarded as a cluster of data objects as a group, which is regarded as a form of compressed data.…”
Section: Data Mining Algorithmmentioning
confidence: 99%
“…In physic, abstract objects or object classes with high similarity are clustering, and the collection of data objects is a cluster. The similarity between this object and objects in the same cluster is high, which is quite different from objects in other clusters [ 16 ]. It can be regarded as a cluster of data objects as a group, which is regarded as a form of compressed data.…”
Section: Data Mining Algorithmmentioning
confidence: 99%
“…The InvoiceDate variable was utilized in the calculation of recency, while the newly obtained attribute, amount, was employed in the computation of the Monetary variable. The clustering methodology employed in this study is the K-Means algorithm, a distance-based clustering technique that partitions objects into clusters based on their numerical attributes (Ramkumar et al, 2021). Customers are categorized by the utilization of K-means clustering, which is predicated on the identification of the clusters to which they belong (Nandapala & Jayasena, 2020).…”
Section: The Proposed Costumer Segmentation Modelmentioning
confidence: 99%