Causal Temporal Reasoning for Markov Decision Processes
December 16, 2022 Β· Declared Dead Β· π Research Directions: Cyber-Physical Systems
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Authors
Milad Kazemi, Nicola Paoletti
arXiv ID
2212.08712
Category
cs.AI: Artificial Intelligence
Cross-listed
eess.SY
Citations
2
Venue
Research Directions: Cyber-Physical Systems
Last Checked
4 months ago
Abstract
We introduce $\textit{PCFTL (Probabilistic CounterFactual Temporal Logic)}$, a new probabilistic temporal logic for the verification of Markov Decision Processes (MDP). PCFTL is the first to include operators for causal reasoning, allowing us to express interventional and counterfactual queries. Given a path formula $Ο$, an interventional property is concerned with the satisfaction probability of $Ο$ if we apply a particular change $I$ to the MDP (e.g., switching to a different policy); a counterfactual allows us to compute, given an observed MDP path $Ο$, what the outcome of $Ο$ would have been had we applied $I$ in the past. For its ability to reason about \textit{what-if} scenarios involving different configurations of the MDP, our approach represents a departure from existing probabilistic temporal logics that can only reason about a fixed system configuration. From a syntactic viewpoint, we introduce a generalized counterfactual operator that subsumes both interventional and counterfactual probabilities as well as the traditional probabilistic operator found in e.g., PCTL. From a semantics viewpoint, our logic is interpreted over a structural causal model translation of the MDP, which gives us a representation amenable to counterfactual reasoning. We evaluate PCFTL in the context of safe reinforcement learning using a benchmark of grid-world models.
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