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Conformal Prediction Intervals for Markov Decision Process Trajectories

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arxiv 2206.04860 v2 pith:4XP3A27I submitted 2022-06-10 cs.LG stat.ML

Conformal Prediction Intervals for Markov Decision Process Trajectories

classification cs.LG stat.ML
keywords predictionintervalsconformalsystemautonomousbehaviorcomputeddecision
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Before delegating a task to an autonomous system, a human operator may want a guarantee about the behavior of the system. This paper extends previous work on conformal prediction for functional data and conformalized quantile regression to provide conformal prediction intervals over the future behavior of an autonomous system executing a fixed control policy on a Markov Decision Process (MDP). The prediction intervals are constructed by applying conformal corrections to prediction intervals computed by quantile regression. The resulting intervals guarantee that with probability $1-\delta$ the observed trajectory will lie inside the prediction interval, where the probability is computed with respect to the starting state distribution and the stochasticity of the MDP. The method is illustrated on MDPs for invasive species management and StarCraft2 battles.

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