Publication | Open Access
Estimating Risk and Uncertainty in Deep Reinforcement Learning
55
Citations
41
References
2019
Year
Artificial IntelligenceEngineeringMachine LearningReinforcement Learning AgentsRisk AnalysisUncertainty ModelingUncertainty QuantificationDeep UncertaintyRisk ManagementManagementUncertainty-aware Dqn AlgorithmStatisticsMinatar TestbedUncertainty (Knowledge Representation)Sequential Decision MakingComputer ScienceExploration V ExploitationUncertainty (Quantum Physics)Deep Reinforcement Learning
Reinforcement learning agents are faced with two types of uncertainty. Epistemic uncertainty stems from limited data and is useful for exploration, whereas aleatoric uncertainty arises from stochastic environments and must be accounted for in risk-sensitive applications. We highlight the challenges involved in simultaneously estimating both of them, and propose a framework for disentangling and estimating these uncertainties on learned Q-values. We derive unbiased estimators of these uncertainties and introduce an uncertainty-aware DQN algorithm, which we show exhibits safe learning behavior and outperforms other DQN variants on the MinAtar testbed.
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