Abstract
Performance evaluation is a broad discipline within computer science, combining deep technical work in experimentation, simulation, and modeling. The field’s subjects encompass all aspects of computer systems, including computer architecture, networking, energy efficiency, and machine learning. This wide methodological and topical focus can make it difficult to discern what attracts the community’s attention and how this attention evolves over time. As a first attempt to quantify and qualify this attention, using the proxy metric of paper citations, this study looks at the premier conference in the field, SIGMETRICS. We analyze citation frequencies at monthly intervals over a five-year period and examine possible associations with myriad other factors, such as time since publication, comparable conferences, peer review, self-citations, author demographics, and textual properties of the papers. We found that in several ways, SIGMETRICS is distinctive not only in its scope, but also in its citation phenomena: papers generally exhibit a strongly linear rate of citation growth over time, few if any uncited papers, a large gamut of topics of interest, and a possible disconnect between peer-review outcomes and eventual citations. The two most-cited papers in the dataset also exhibit larger author teams, higher than typical self-citations, and distinctive citation growth curves. These two papers, sharing some coauthors and a research focus, could either signal the area where SIGMETRICS had the most research impact, or they could represent outliers; their omission from the analysis reduces some of the otherwise distinctive observed metrics to nonsignificant levels.
Subject
Computer Science Applications,Media Technology,Communication,Business and International Management,Library and Information Sciences
Reference55 articles.
1. (2022, October 26). ACM Special Interest Group on Performance Evaluation. Available online: http://www.sigmetrics.org.
2. (2022, July 26). ACM Conference Statistics for SIGMETRICS. Available online: https://dl.acm.org/conference/metrics.
3. Moed, H.F. (2006). Citation Analysis in Research Evaluation, Springer Science & Business Media.
4. Broch, E. (2001, January 9–13). Cite me, cite my references? (Scholarly use of the ACM SIGIR proceedings based on two citation indexes). Proceedings of the 24th Annual International ACM SIGIR Conference on Research and Development in Information Retrieval, New Orleans, LA, USA.
5. Five decades of the ACM special interest group on data communications (SIGCOMM) a bibliometric perspective;Iqbal;ACM SIGCOMM Comput. Commun. Rev.,2019
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