How good are my search strings? Reflections on using an existing review as a quasi-gold standard
February 16, 2024 Β· Declared Dead Β· π e-Informatica Software Engineering Journal
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Authors
Huynh Khanh Vi Tran, JΓΌrgen BΓΆrstler, Nauman Bin Ali, Michael Unterkalmsteiner
arXiv ID
2402.11041
Category
cs.SE: Software Engineering
Citations
9
Venue
e-Informatica Software Engineering Journal
Last Checked
4 months ago
Abstract
Background: Systematic literature studies (SLS) have become a core research methodology in Evidence-based Software Engineering (EBSE). Search completeness, ie, finding all relevant papers on the topic of interest, has been recognized as one of the most commonly discussed validity issues of SLSs. Aim: This study aims at raising awareness on the issues related to search string construction and on search validation using a quasi-gold standard (QGS). Furthermore, we aim at providing guidelines for search string validation. Method: We use a recently completed tertiary study as a case and complement our findings with the observations from other researchers studying and advancing EBSE. Results: We found that the issue of assessing QGS quality has not seen much attention in the literature, and the validation of automated searches in SLSs could be improved. Hence, we propose to extend the current search validation approach by the additional analysis step of the automated search validation results and provide recommendations for the QGS construction. Conclusion: In this paper, we report on new issues which could affect search completeness in SLSs. Furthermore, the proposed guideline and recommendations could help researchers implement a more reliable search strategy in their SLSs.
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