Abstract
This study analyzed 16,799 journal papers and 98,773 conference papers published by IEEE Xplore in 2016 to investigate the relationships among usage counts, Mendeley readership, and citations through descriptive, regression, and mediation analyses. Differences in the relationship among these metrics between journal and conference papers are also studied. Results showed that there is no significant difference between journal and conference papers in the distribution patterns and accumulation rates of the three metrics. However, the correlation coefficients of the interrelationships between the three metrics were lower in conference papers compared to journal papers. Secondly, funding, international collaboration, and open access are positively associated with all three metrics, except for the case of funding on the usage metrics of conference papers. Furthermore, early Mendeley readership is a better predictor of citations than early usage counts and performs better for journal papers. Finally, we reveal that early Mendeley readership partially mediates between early usage counts and citation counts in the journal and conference papers. The main difference is that conference papers rely more on the direct effect of early usage counts on citations. This study contributes to expanding the existing knowledge on the relationships among usage counts, Mendeley readership, and citations in journal and conference papers, providing new insights into the relationship between the three metrics through mediation analysis.
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Data and codes can be accessed from this URL: https://github.com/Tianwencan/IEEE_usage
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The authors are grateful to the anonymous reviewers for their helpful comments and suggestions.
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This study is supported by the National Natural Science Foundation of China (Grant No. 71974029). Rodrigo Costas is partially funded by the South African DSI-NRF Centre of Excellence in Scientometrics and Science, Technology and Innovation Policy (SciSTIP). Wencan Tian is financially supported by the China Scholarship Council (Grant No. 202106060134). Zhichao Fang is funded by the Scientific Research Funding of Renmin University of China (Grant No. 23XNF037).
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One of the authors (Rodrigo Costas) is a member of the Distinguished Reviewers Board of the journal Scientometrics.
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Tian, W., Fang, Z., Wang, X. et al. A multi-dimensional analysis of usage counts, Mendeley readership, and citations for journal and conference papers. Scientometrics 129, 985–1013 (2024). https://doi.org/10.1007/s11192-023-04909-w
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DOI: https://doi.org/10.1007/s11192-023-04909-w