Assessing Reproducibility in Evolutionary Computation: A Case Study using Human- and LLM-based Assessment
This addresses reproducibility gaps in evolutionary computation research, offering an automated tool for monitoring, but it is incremental as it builds on existing reproducibility frameworks.
The study assessed reproducibility practices in evolutionary computation papers over ten years, finding an average completeness score of 0.62 and that 36.90% provided additional materials, and demonstrated that an LLM-based automated tool (RECAP) achieved substantial agreement with human evaluators (Cohen's k of 0.67).
Reproducibility is an important requirement in evolutionary computation, where results largely depend on computational experiments. In practice, reproducibility relies on how algorithms, experimental protocols, and artifacts are documented and shared. Despite growing awareness, there is still limited empirical evidence on the actual reproducibility levels of published work in the field. In this paper, we study the reproducibility practices in papers published in the Evolutionary Combinatorial Optimization and Metaheuristics track of the Genetic and Evolutionary Computation Conference over a ten-year period. We introduce a structured reproducibility checklist and apply it through a systematic manual assessment of the selected corpus. In addition, we propose RECAP (REproducibility Checklist Automation Pipeline), an LLM-based system that automatically evaluates reproducibility signals from paper text and associated code repositories. Our analysis shows that papers achieve an average completeness score of 0.62, and that 36.90% of them provide additional material beyond the manuscript itself. We demonstrate that automated assessment is feasible: RECAP achieves substantial agreement with human evaluators (Cohen's k of 0.67). Together, these results highlight persistent gaps in reproducibility reporting and suggest that automated tools can effectively support large-scale, systematic monitoring of reproducibility practices.