LGMLMar 4, 2020

Exploration-Exploitation in Constrained MDPs

arXiv:2003.02189v1212 citations
AI Analysis

This addresses the problem of safe learning in constrained sequential decision-making for AI agents, but it is incremental as it builds on existing CMDP frameworks.

The paper tackles the exploration-exploitation dilemma in Constrained Markov Decision Processes (CMDPs) by analyzing two approaches—linear programming and dual formulation—and shows that both achieve sublinear regret for utility and constraint violations, with the linear approach providing stronger guarantees.

In many sequential decision-making problems, the goal is to optimize a utility function while satisfying a set of constraints on different utilities. This learning problem is formalized through Constrained Markov Decision Processes (CMDPs). In this paper, we investigate the exploration-exploitation dilemma in CMDPs. While learning in an unknown CMDP, an agent should trade-off exploration to discover new information about the MDP, and exploitation of the current knowledge to maximize the reward while satisfying the constraints. While the agent will eventually learn a good or optimal policy, we do not want the agent to violate the constraints too often during the learning process. In this work, we analyze two approaches for learning in CMDPs. The first approach leverages the linear formulation of CMDP to perform optimistic planning at each episode. The second approach leverages the dual formulation (or saddle-point formulation) of CMDP to perform incremental, optimistic updates of the primal and dual variables. We show that both achieves sublinear regret w.r.t.\ the main utility while having a sublinear regret on the constraint violations. That being said, we highlight a crucial difference between the two approaches; the linear programming approach results in stronger guarantees than in the dual formulation based approach.

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