Causal Explanations for Sequential Decision Making Under Uncertainty
We introduce a novel framework for causal explanations of stochastic, sequential decision-making systems built on the well-studied structural causal model paradigm for causal reasoning. This single framework can identify multiple, semantically distinct explanations for agent actions -- something not...
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Zusammenfassung: | We introduce a novel framework for causal explanations of stochastic,
sequential decision-making systems built on the well-studied structural causal
model paradigm for causal reasoning. This single framework can identify
multiple, semantically distinct explanations for agent actions -- something not
previously possible. In this paper, we establish exact methods and several
approximation techniques for causal inference on Markov decision processes
using this framework, followed by results on the applicability of the exact
methods and some run time bounds. We discuss several scenarios that illustrate
the framework's flexibility and the results of experiments with human subjects
that confirm the benefits of this approach. |
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DOI: | 10.48550/arxiv.2205.15462 |