The purpose of this paper is to introduce a notion of causality in Markov decision processes based on the probability-raising principle and to analyze its algorithmic properties. The latter includes algorithms for checking cause-effect relationships and the existence of probability-raising causes for given effect scenarios. Inspired by concepts of statistical analysis, we study quality measures (recall, coverage ratio and f-score) for causes and develop algorithms for their computation. Finally, the computational complexity for finding optimal causes with respect to these measures is analyzed.
翻译:本文的目的是在Markov基于提高概率原则的决定程序中引入因果关系概念,并分析其算法特性,后者包括用于检查因果关系的算法,以及特定效果情景中是否存在提高概率的原因。我们受统计分析概念的启发,研究原因的定性措施(召回、覆盖率和f-score),并制订计算这些原因的算法。最后,分析了找到这些措施最佳原因的计算复杂性。