Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database

Background: Open-access is free online access to articles, journal, conferences proceedings, book series and trade journal which provides unrestricted and permit the users to read, download, print, copy and link to the articles. Many articles that discuss the journal metrics using basic statistical...

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Main Authors: Rizki Agung Wibowo, Khoirin Nisa, Amril Samosir
Format: Article
Language:English
Published: Universitas Diponegoro 2024-12-01
Series:Lentera Pustaka: Jurnal Kajian Ilmu Perpustakaan, Informasi dan Kearsipan
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Online Access:https://ejournal.undip.ac.id/index.php/lpustaka/article/view/68282
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author Rizki Agung Wibowo
Khoirin Nisa
Amril Samosir
author_facet Rizki Agung Wibowo
Khoirin Nisa
Amril Samosir
author_sort Rizki Agung Wibowo
collection DOAJ
description Background: Open-access is free online access to articles, journal, conferences proceedings, book series and trade journal which provides unrestricted and permit the users to read, download, print, copy and link to the articles. Many articles that discuss the journal metrics using basic statistical methods to discribe the journal. Objective: This research groups journals based on numerical quality measures, identifying quality characteristics for each group. The findings provide a reference for researchers to select suitable journals and for journal owners to improve journal quality. Methods: There is another method to describe the open-access journal by grouping it into groups with the homogeneous characteristics based on five types of numerical quality measure that are analyzed simultaneously, namely cluster analysis. By using cluster analysis, the article’s owner can determine which journals he can choose to publish it in according to the desired journal quality. Based in the result, 5146 open-access journals can be divided into four clusters by using CLARA algorithm. Cluster 1, 2 and 3 have high characteristics in all numerical quality measure and cluster 4 have low characteristics in all numerical quality measure. So that researchers can choose journals in clusters 1, 2, and 3 as a place to publish their research by adjusting the journal's scope. Results: This study demonstrates that the CLARA algorithm successfully grouped 5146 open-access journals indexed by SCOPUS into four clusters based on quality characteristics. Cluster 1 consists of 39 journals with high values across all quality variables, Cluster 2 includes 50 journals with similarly high values, Cluster 3 contains 430 journals with comparable characteristics, and Cluster 4, comprising 4627 journals, exhibits low values in all quality variables. Furthermore, the majority of journals (89.914%) have numerical quality measures below the average. Conclusion: This study concludes that journals in Clusters 1, 2, and 3 can be recommended as suitable options for researchers to publish their work, considering the relevance of the journal's scope. Additionally, these findings can serve as a reference for journal owners to improve the quality of their journals to meet higher standards.
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series Lentera Pustaka: Jurnal Kajian Ilmu Perpustakaan, Informasi dan Kearsipan
spelling doaj-art-66bf4c9714964e50bade6f92aa12a1722025-08-20T02:24:14ZengUniversitas DiponegoroLentera Pustaka: Jurnal Kajian Ilmu Perpustakaan, Informasi dan Kearsipan2302-46662540-96382024-12-0110210711610.14710/lenpust.v10i2.6828225191Robust Clustering of Open Access Journal Based on Scopus Journal Metrics DatabaseRizki Agung Wibowo0Khoirin Nisa1https://orcid.org/0000-0003-1206-2367Amril Samosir2Department of Management, Faculty of Economics and Management, Malayahati University, Lampung, IndonesiaDepartment of Mathematics, Faculty of Mathematics and Natural Science, University of Lampung, Lampung, IndonesiaDepartment of Management, Faculty of Economics and Management, Malayahati University, Lampung, IndonesiaBackground: Open-access is free online access to articles, journal, conferences proceedings, book series and trade journal which provides unrestricted and permit the users to read, download, print, copy and link to the articles. Many articles that discuss the journal metrics using basic statistical methods to discribe the journal. Objective: This research groups journals based on numerical quality measures, identifying quality characteristics for each group. The findings provide a reference for researchers to select suitable journals and for journal owners to improve journal quality. Methods: There is another method to describe the open-access journal by grouping it into groups with the homogeneous characteristics based on five types of numerical quality measure that are analyzed simultaneously, namely cluster analysis. By using cluster analysis, the article’s owner can determine which journals he can choose to publish it in according to the desired journal quality. Based in the result, 5146 open-access journals can be divided into four clusters by using CLARA algorithm. Cluster 1, 2 and 3 have high characteristics in all numerical quality measure and cluster 4 have low characteristics in all numerical quality measure. So that researchers can choose journals in clusters 1, 2, and 3 as a place to publish their research by adjusting the journal's scope. Results: This study demonstrates that the CLARA algorithm successfully grouped 5146 open-access journals indexed by SCOPUS into four clusters based on quality characteristics. Cluster 1 consists of 39 journals with high values across all quality variables, Cluster 2 includes 50 journals with similarly high values, Cluster 3 contains 430 journals with comparable characteristics, and Cluster 4, comprising 4627 journals, exhibits low values in all quality variables. Furthermore, the majority of journals (89.914%) have numerical quality measures below the average. Conclusion: This study concludes that journals in Clusters 1, 2, and 3 can be recommended as suitable options for researchers to publish their work, considering the relevance of the journal's scope. Additionally, these findings can serve as a reference for journal owners to improve the quality of their journals to meet higher standards.https://ejournal.undip.ac.id/index.php/lpustaka/article/view/68282open-accessscopus, robust, clustering, clara
spellingShingle Rizki Agung Wibowo
Khoirin Nisa
Amril Samosir
Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
Lentera Pustaka: Jurnal Kajian Ilmu Perpustakaan, Informasi dan Kearsipan
open-access
scopus, robust, clustering, clara
title Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
title_full Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
title_fullStr Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
title_full_unstemmed Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
title_short Robust Clustering of Open Access Journal Based on Scopus Journal Metrics Database
title_sort robust clustering of open access journal based on scopus journal metrics database
topic open-access
scopus, robust, clustering, clara
url https://ejournal.undip.ac.id/index.php/lpustaka/article/view/68282
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AT khoirinnisa robustclusteringofopenaccessjournalbasedonscopusjournalmetricsdatabase
AT amrilsamosir robustclusteringofopenaccessjournalbasedonscopusjournalmetricsdatabase