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2022
DOI: 10.38094/jastt302138
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Semantic-Based K-Means Clustering for IMDB Top 100 Movies

Abstract: Textual documents are growing rapidly through the internet in today’s modern technology era. Electronic structured databases archive offline and online documents, e-mails, webpages, blog and social network posts. Without appropriate ranking and demand clustering when there is classification without any specifics, it is quite difficult to retain and access these documents. K-means is one of the methods that is frequently used for clustering. In terms of determining the proximity of meaning or semantics between … Show more

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