Explaining a Staff Rostering Genetic Algorithm using Sensitivity Analysis and Trajectory Analysis.

Martin Fyvie, J. Mccall, Lee A. Christie, A. Brownlee
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Abstract

In the field of Explainable AI, population-based search metaheuristics are of growing interest as they become more widely used in critical applications. The ability to relate key information regarding algorithm behaviour and drivers of solution quality to an end-user is vital. This paper investigates a novel method of explanatory feature extraction based on analysis of the search trajectory and compares the results to those of sensitivity analysis using "Weighted Ranked Biased Overlap". We apply these techniques to search trajectories generated by a genetic algorithm as it solves a staff rostering problem. We show that there is a significant overlap between these two explainability methods when identifying subsets of rostered workers whose allocations are responsible for large portions of fitness change in an optimization run. Both methods identify similar patterns in sensitivity, but our method also draws out additional information. As the search progresses, the techniques reveal how individual workers increase or decrease in the influence on the overall rostering solution's quality. Our method also helps identify workers with a lower impact on overall solution fitness and at what stage in the search these individuals can be considered highly flexible in their roster assignment.
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用灵敏度分析和轨迹分析解释员工名册遗传算法。
在可解释的人工智能领域,基于人群的搜索元启发式越来越受到人们的关注,因为它们在关键应用中得到了越来越广泛的应用。将有关算法行为和解决方案质量驱动因素的关键信息与最终用户联系起来的能力至关重要。本文研究了一种基于搜索轨迹分析的解释特征提取新方法,并将结果与使用“加权排序偏置重叠”的敏感性分析结果进行了比较。我们应用这些技术来搜索由遗传算法生成的轨迹,因为它解决了一个员工名册问题。我们表明,当确定在优化运行中分配负责大部分适应度变化的已登记工人子集时,这两种可解释性方法之间存在显著的重叠。两种方法在灵敏度上识别出相似的模式,但我们的方法也提取了额外的信息。随着搜索的进展,这些技术揭示了个体工人对整体名册解决方案质量的影响是如何增加或减少的。我们的方法还有助于识别对整体解决方案适应度影响较小的员工,以及在搜索的哪个阶段,这些员工可以被认为是高度灵活的。
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