TX-Gen: Multi-Objective Optimization for Sparse Counterfactual Explanations for Time-Series Classification

Qi Huang, Sofoklis Kitharidis, Thomas Bäck, Niki van Stein
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Abstract

In time-series classification, understanding model decisions is crucial for their application in high-stakes domains such as healthcare and finance. Counterfactual explanations, which provide insights by presenting alternative inputs that change model predictions, offer a promising solution. However, existing methods for generating counterfactual explanations for time-series data often struggle with balancing key objectives like proximity, sparsity, and validity. In this paper, we introduce TX-Gen, a novel algorithm for generating counterfactual explanations based on the Non-dominated Sorting Genetic Algorithm II (NSGA-II). TX-Gen leverages evolutionary multi-objective optimization to find a diverse set of counterfactuals that are both sparse and valid, while maintaining minimal dissimilarity to the original time series. By incorporating a flexible reference-guided mechanism, our method improves the plausibility and interpretability of the counterfactuals without relying on predefined assumptions. Extensive experiments on benchmark datasets demonstrate that TX-Gen outperforms existing methods in generating high-quality counterfactuals, making time-series models more transparent and interpretable.
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TX-Gen:时间序列分类稀疏反事实解释的多目标优化
在时间序列分类中,理解模型的决策对其在医疗保健和金融等高风险领域的应用至关重要。反事实解释通过提出改变模型预测的替代输入来提供洞察力,提供了一种有前途的解决方案。然而,现有的为时间序列数据生成反事实解释的方法往往难以在接近性、稀疏性和有效性等关键目标之间取得平衡。本文介绍了 TX-Gen,这是一种基于非优势排序遗传算法 II(NSGA-II)的生成反事实解释的新型算法。TX-Gen 利用进化式多目标优化找到了一组既稀疏又有效的多样化反事实,同时保持了与原始时间序列的最小相似性。通过结合灵活的参考引导机制,我们的方法提高了反事实的可信度和可解释性,而无需依赖预先定义的假设。在基准数据集上进行的大量实验证明,TX-Gen 在生成高质量反事实方面优于现有方法,从而使时间序列模型更加透明和可解释。
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