BRETSKO, Daniel, Aliaksandr BELY and Stanislav SOBOLEVSKY. Comparative Analysis of Community Detection and Transformer-Based Approaches for Topic Clustering of Scientific Papers. In Osvaldo Gervasi, Beniamino Murgante, David Taniar, Bernady O. Apduhan, Ana Cristina Braga, Chiara Garau, Anastasia Stratigea. 23rd International Conference on Computational Science and Its Applications , ICCSA 2023. Cham: Springer, 2023, p. 648-660. ISBN 978-3-031-36804-2. Available from: https://dx.doi.org/10.1007/978-3-031-36805-9_42.
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Basic information
Original name Comparative Analysis of Community Detection and Transformer-Based Approaches for Topic Clustering of Scientific Papers
Authors BRETSKO, Daniel (804 Ukraine, guarantor, belonging to the institution), Aliaksandr BELY (112 Belarus, belonging to the institution) and Stanislav SOBOLEVSKY (112 Belarus, belonging to the institution).
Edition Cham, 23rd International Conference on Computational Science and Its Applications , ICCSA 2023, p. 648-660, 13 pp. 2023.
Publisher Springer
Other information
Original language English
Type of outcome Proceedings paper
Field of Study 10201 Computer sciences, information science, bioinformatics
Country of publisher Germany
Confidentiality degree is not subject to a state or trade secret
Publication form printed version "print"
WWW URL
Impact factor Impact factor: 0.402 in 2005
RIV identification code RIV/00216224:14310/23:00131468
Organization unit Faculty of Science
ISBN 978-3-031-36804-2
ISSN 0302-9743
Doi http://dx.doi.org/10.1007/978-3-031-36805-9_42
UT WoS 001166618800042
Keywords in English Network analysis; NLP; Topic clustering; Community detection; Sentence-transformers
Tags rivok
Tags International impact, Reviewed
Changed by Changed by: Mgr. Marie Šípková, DiS., učo 437722. Changed: 21/3/2024 10:32.
Abstract
We are solving the topic clustering problem, where we need to categorize papers with initially available subjects into more consistent and higher-level topics. We approach the task from two perspectives, one is the traditional network science, where we perform community detection on a subject network with the use of Combo algorithm, and the second is the transformer-based top2vec algorithm which uses sentence-transformer to embed the content of the papers. The comparison between the two approaches was conducted using a dataset of scientific papers on computer science and mathematics collected from the SCOPUS database, and different coherence scores were used as a measure of performance. The results showed that the community detection Combo algorithm was able to achieve a similar coherence score to the transformer-based top2vec. The findings suggest that community detection may be a viable alternative for topic clustering when one has predefined topics, especially when a high coherence score and fast processing time are desired. The paper also discusses the potential advantages and limitations of using Combo for topic clustering and the potential for future work in this area.
Links
EF16_019/0000822, research and development projectName: Centrum excelence pro kyberkriminalitu, kyberbezpečnost a ochranu kritických informačních infrastruktur
MUNI/J/0008/2021, interní kód MUName: Digital City
Investor: Masaryk University, MASH JUNIOR - MUNI Award In Science and Humanities JUNIOR
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