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WEClustering: word embeddings based text clustering technique for large datasets
by
Mehta, Vivek
, Singh, Jasmeet
, Bawa, Seema
in
Clustering
/ Coders
/ Complexity
/ Computational Intelligence
/ Data mining
/ Data Structures and Information Theory
/ Datasets
/ Engineering
/ Information retrieval
/ Original
/ Original Article
2021
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WEClustering: word embeddings based text clustering technique for large datasets
by
Mehta, Vivek
, Singh, Jasmeet
, Bawa, Seema
in
Clustering
/ Coders
/ Complexity
/ Computational Intelligence
/ Data mining
/ Data Structures and Information Theory
/ Datasets
/ Engineering
/ Information retrieval
/ Original
/ Original Article
2021
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Do you wish to request the book?
WEClustering: word embeddings based text clustering technique for large datasets
by
Mehta, Vivek
, Singh, Jasmeet
, Bawa, Seema
in
Clustering
/ Coders
/ Complexity
/ Computational Intelligence
/ Data mining
/ Data Structures and Information Theory
/ Datasets
/ Engineering
/ Information retrieval
/ Original
/ Original Article
2021
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WEClustering: word embeddings based text clustering technique for large datasets
Journal Article
WEClustering: word embeddings based text clustering technique for large datasets
2021
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Overview
A massive amount of textual data now exists in digital repositories in the form of research articles, news articles, reviews, Wikipedia articles, and books, etc. Text clustering is a fundamental data mining technique to perform categorization, topic extraction, and information retrieval. Textual datasets, especially which contain a large number of documents are sparse and have high dimensionality. Hence, traditional clustering techniques such as K-means, Agglomerative clustering, and DBSCAN cannot perform well. In this paper, a clustering technique especially suitable to large text datasets is proposed that overcome these limitations. The proposed technique is based on word embeddings derived from a recent deep learning model named “Bidirectional Encoders Representations using Transformers”. The proposed technique is named as WEClustering. The proposed technique deals with the problem of high dimensionality in an effective manner, hence, more accurate clusters are formed. The technique is validated on several datasets of varying sizes and its performance is compared with other widely used and state of the art clustering techniques. The experimental comparison shows that the proposed clustering technique gives a significant improvement over other techniques as measured by metrics such Purity and Adjusted Rand Index.
Publisher
Springer International Publishing,Springer Nature B.V
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