WISCA: A Consensus-Based Approach to Harmonizing Interpretability in Tabular Datasets
WISCA: A Consensus-Based Approach to Harmonizing Interpretability in Tabular Datasets
While predictive accuracy is often prioritized in machine learning (ML) models, interpretability remains essential in scientific and high-stakes domains. However, diverse interpretability algorithms frequently yield conflicting explanations, highlighting the need for consensus to harmonize results. In this study, six ML models were trained on six synthetic datasets with known ground truths, utilizing various model-agnostic interpretability techniques. Consensus explanations were generated using established methods and a novel approach: WISCA (Weighted Scaled Consensus Attributions), which integrates class probability and normalized attributions. WISCA consistently aligned with the most reliable individual method, underscoring the value of robust consensus strategies in improving explanation reliability.
Antonio Jesús Banegas-Luna、Horacio Pérez-Sánchez、Carlos Martínez-Cortés
信息科学、信息技术
Antonio Jesús Banegas-Luna,Horacio Pérez-Sánchez,Carlos Martínez-Cortés.WISCA: A Consensus-Based Approach to Harmonizing Interpretability in Tabular Datasets[EB/OL].(2025-06-06)[2025-06-23].https://arxiv.org/abs/2506.06455.点此复制
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