A comprehensive approach for clustering analysis using follower-leading clustering algorithm (FLCA): Bibliometric analysis

Author:

Cheng Teng-Yun1,Ho Sam Yu-Chieh2,Chien Tsair-Wei3,Chow Julie Chi45,Chou Willy67ORCID

Affiliation:

1. Department of Emergency Medicine, Chi Mei Medical Center, Liouying, Tainan, Taiwan

2. Department of Emergency Medicine, Chi-Mei Medical Center, Tainan, Taiwan

3. Department of Medical Research, Chi-Mei Medical Center, Tainan, Taiwan

4. Department of Pediatrics, Chi Mei Medical Center, Tainan, Taiwan

5. Department of Pediatrics, School of Medicine, College of Medicine, Taipei Medical University, Taipei, Taiwan

6. Department of Physical Medicine and Rehabilitation, Chiali Chi-Mei Hospital, Tainan, Taiwan

7. Department of Physical Medicine and Rehabilitation, Chung San Medical University Hospital, Taichung, Taiwan.

Abstract

Background: There are 3 issues in bibliometrics that need to be addressed: The lack of a clear definition for author collaborations in cluster analysis that takes into account collaborations with and without self-connections; The need to develop a simple yet effective clustering algorithm for use in coword analysis, and; The inadequacy of general bibliometrics in regard to comparing research achievements and identifying articles that are worth reading and recommended for readers. The study aimed to put forth a clustering algorithm for cluster analysis (called following leader clustering [FLCA], a follower-leading clustering algorithm), examine the dissimilarities in cluster outcomes when considering collaborations with and without self-connections in cluster analysis, and demonstrate the application of the clustering algorithm in bibliometrics. Methods: The study involved a search for articles and review articles published in JMIR Medical Informatics between 2016 and 2022, conducted using the Web of Science core collections. To identify author collaborations (ACs) and themes over the past 7 years, the study utilized the FLCA algorithm. With the 3 objectives of; Comparing the results obtained from scenarios with and without self-connections; Applying the FLCA algorithm in ACs and themes, and; Reporting the findings using traditional bibliometric approaches based on counts and citations, and all plots were created using R. Results: The study found a significant difference in cluster outcomes between the 2 scenarios with and without self-connections, with a 53.8% overlap (14 out of the top 20 countries in ACs). The top clusters were led by Yonsei University in South Korea, Grang Luo from the US, and model in institutes, authors, and themes over the past 7 years. The top entities with the most publications in JMIR Medical Informatics were the United States, Yonsei University in South Korea, Medical School, and Grang Luo from the US. Conclusion: The FLCA algorithm proposed in this study offers researchers a comprehensive approach to exploring and comprehending the complex connections among authors or keywords. The study suggests that future research on ACs with cluster analysis should employ FLCA and R visualizations.

Publisher

Ovid Technologies (Wolters Kluwer Health)

Subject

General Medicine

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