This work introduces a novel cause-effect relation in Markov decision processes using the probability-raising principle. Initially, sets of states as causes and effects are considered, which is subsequently extended to regular path properties as effects and then as causes. The paper lays the mathematical foundations and analyzes the algorithmic properties of these cause-effect relations. This includes algorithms for checking cause conditions given an effect and deciding the existence of probability-raising causes. As the definition allows for sub-optimal coverage properties, quality measures for causes inspired by concepts of statistical analysis are studied. These include recall, coverage ratio and f-score. The computational complexity for finding optimal causes with respect to these measures is analyzed.
翻译:这项工作利用提高概率原则在Markov决策过程中引入了一种新的因果关系。最初,将一系列因果考虑,随后将之扩展至正常路径特性,作为效果,然后作为原因。论文奠定了数学基础,分析了这些因果关系的算法特性。这包括用于检查产生效果的原因和确定概率提高原因是否存在的算法。由于定义允许亚优覆盖率属性,因此对统计分析概念所启发的因果质量计量进行了研究,包括回溯、覆盖面比率和次核心。分析了找到这些措施的最佳原因的计算复杂性。