可解释AI的因果发现:一种双重编码方法 / Causal Discovery for Explainable AI: A Dual-Encoding Approach
1️⃣ 一句话总结
这篇论文提出了一种新的双重编码因果发现方法,通过结合两种编码策略和多数投票机制,有效解决了传统方法在处理分类数据时的不稳定性问题,从而更可靠地揭示机器学习模型决策背后的因果关系。
Understanding causal relationships among features is fundamental for explaining machine learning model decisions. However, traditional causal discovery methods face challenges with categorical variables due to numerical instability in conditional independence testing. We propose a dual-encoding causal discovery approach that addresses these limitations by running constraint-based algorithms with complementary encoding strategies and merging results through majority voting. Applied to the Titanic dataset, our method identifies causal structures that align with established explainable methods.
可解释AI的因果发现:一种双重编码方法 / Causal Discovery for Explainable AI: A Dual-Encoding Approach
这篇论文提出了一种新的双重编码因果发现方法,通过结合两种编码策略和多数投票机制,有效解决了传统方法在处理分类数据时的不稳定性问题,从而更可靠地揭示机器学习模型决策背后的因果关系。
源自 arXiv: 2601.21221