Fast-Tracking Stationary MOMDPs for Adaptive Management Problems

Authors

  • Martin Péron Queensland University of Technology, CSIRO
  • Kai Becker University of Strathclyde
  • Peter Bartlett University of California, Berkeley
  • Iadine Chadès Commonwealth Scientific and Industrial Research Organisation

DOI:

https://doi.org/10.1609/aaai.v31i1.11173

Keywords:

Partially observable Markov decision process, mixed observable Markov decision process, adaptive management, adaptive learning policy, exploration/exploitation trade-off

Abstract

Adaptive management is applied in conservation and natural resource management, and consists of making sequential decisions when the transition matrix is uncertain. Informally described as ’learning by doing’, this approach aims to trade off between decisions that help achieve the objective and decisions that will yield a better knowledge of the true transition matrix. When the true transition matrix is assumed to be an element of a finite set of possible matrices, solving a mixed observability Markov decision process (MOMDP) leads to an optimal trade-off but is very computationally demanding. Under the assumption (common in adaptive management) that the true transition matrix is stationary, we propose a polynomial-time algorithm to find a lower bound of the value function. In the corners of the domain of the value function (belief space), this lower bound is provably equal to the optimal value function. We also show that under further assumptions, it is a linear approximation of the optimal value function in a neighborhood around the corners. We evaluate the benefits of our approach by using it to initialize the solvers MO-SARSOP and Perseus on a novel computational sustainability problem and a recent adaptive management data challenge. Our approach leads to an improved initial value function and translates into significant computational gains for both solvers.

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Published

2017-02-12

How to Cite

Péron, M., Becker, K., Bartlett, P., & Chadès, I. (2017). Fast-Tracking Stationary MOMDPs for Adaptive Management Problems. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.11173

Issue

Section

Special Track on Computational Sustainability