Redesigning Stochastic Environments for Maximized Utility

Authors

  • Sarah Keren Technion - Israel Institute of Technology
  • Avigdor Gal Technion - Israel Institute of Technology
  • Erez Karpas Technion - Israel Institute of Technology
  • Luis Pineda University of Massachusetts Amherst
  • Shlomo Zilberstein University of Massachusetts Amherst

DOI:

https://doi.org/10.1609/aaai.v31i1.11095

Keywords:

Probabilistic planning, Markov Decision Process, Goal recognition, Compilation to planning

Abstract

​We present the Utility Maximizing Design (UMD) model​ for optimally redesigning stochastic environments to achieve maximized performance. This model suits well contemporary ​​applications that involve the design of environments where robots and humans co-exist an co-operate, e.g., vacuum cleaning robot. We discuss two special cases of the UMD model. The first is the equi-reward UMD (ER-UMD)​ ​in which the agents and the system share a utility function, such as for the vacuum cleaning robot. The second is the goal​ ​recognition design (GRD) setting, discussed in the literature, in which system and agent utilities are independent. To find the set of optimal​​ modifications to apply to a UMD model, we propose the use of heuristic search, extending previous methods used for GRD settings. After specifying the conditions for optimality in the​ general case, we present an admissible heuristic for the ER-UMD case. We also present a novel compilation that embeds​ the redesign process into a planning problem, allowing use of any off-the-shelf solver to find the best way to modify an environment when a design budget is specified. Our evaluation shows the feasibility of the approach using standard bench​​marks from the probabilistic planning competition.​

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Published

2017-02-12

How to Cite

Keren, S., Gal, A., Karpas, E., Pineda, L., & Zilberstein, S. (2017). Redesigning Stochastic Environments for Maximized Utility. Proceedings of the AAAI Conference on Artificial Intelligence, 31(1). https://doi.org/10.1609/aaai.v31i1.11095