This paper addresses the critical instability of Local Interpretable Model-agnostic Explanations (LIME). We introduce Adaptive Kernel Density Estimation LIME (AKDE-LIME), a novel approach that enhances local explanation stability by incorporating a density-aware weighting scheme. Unlike LIME’s standard proximity kernel, AKDE-LIME combines distance weighting with a Kernel Density Estimate (KDE) of the local sample distribution, assigning more representative weights to generated perturbations. We conduct a comprehensive evaluation of AKDE-LIME against LIME, TreeSHAP, and Anchor on five diverse tree-based models using a real-world dataset. Assessing performance on Stability and Robustness metrics across a matrix of noise levels (5% to 20%), our results consistently demonstrate that AKDE-LIME produces significantly more stable and robust explanations than standard LIME under all conditions. The performance of our method is often comparable to or better than state-of-the-art explainers like TreeSHAP. We conclude that AKDE-LIME is a promising and reliable alternative for generating trustworthy local explanations, addressing a key weakness of the original LIME algorithm.
Tzionis et al. (Sat,) studied this question.
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