cs.AI updates on arXiv.org 09月15日
对比分析不同反事实模型及其应用
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本文探讨人工智能中反事实思维的重要性与挑战,对比分析了多种反事实模型及其理论基础与应用方法,并构建了统一的图形因果框架以推断时空反事实。

arXiv:2407.01875v2 Announce Type: replace Abstract: Counterfactual thinking is a critical yet challenging topic for artificial intelligence to learn knowledge from data and ultimately improve their performances for new scenarios. Many research works, including Potential Outcome Model and Structural Causal Model, have been proposed to realize it. However, their modelings, theoretical foundations and application approaches are usually different. Moreover, there is a lack of graphical approach to infer spatio-temporal counterfactuals, that considers spatial and temporal interactions between multiple units. Thus, in this work, our aim is to investigate a survey to compare and discuss different counterfactual models, theories and approaches, and further build a unified graphical causal frameworks to infer the spatio-temporal counterfactuals.

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反事实思维 人工智能 模型比较 时空反事实 因果框架
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