On Adversarial Policy Switching with Experiments in Real-Time Strategy Games

Authors

  • Brian King Oregon State University
  • Alan Fern Oregon State University
  • Jesse Hostetler Oregon State University

DOI:

https://doi.org/10.1609/icaps.v23i1.13602

Keywords:

Policy switching, Markov games, Real-time strategy games

Abstract

Given a Markov game, it is often possible to hand-code or learn a set of policies that capture a diversity of possible strategies. It is also often possible to hand-code or learn an abstract simulator of the game that can estimate the outcome of playing two strategies against one another from any state. We consider how to use such policy sets and simulators to make decisions in large Markov games such as real-time strategy (RTS) games. Prior work has considered the problem using an approach we call minimax policy switching. At each decision epoch, all policy pairs are simulated against each other from the current state, and the minimax policy is chosen and used to select actions until the next decision epoch. While intuitively appealing, our first contribution is to show that this switching policy can have arbitrarily poor worst case performance. Our second contribution is to describe a simple modification, whose worst case performance is provably no worse than the minimax fixed policy in the set. Our final contribution is to conduct experiments with these algorithms in the domain of RTS games using both an abstract game engine that we can exactly simulate and a real game engine that we can only approximately simulate. The results show the effectiveness of policy switching when the simulator is accurate, and highlight challenges in the face of inaccurate simulations.

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Published

2013-06-02

How to Cite

King, B., Fern, A., & Hostetler, J. (2013). On Adversarial Policy Switching with Experiments in Real-Time Strategy Games. Proceedings of the International Conference on Automated Planning and Scheduling, 23(1), 322-326. https://doi.org/10.1609/icaps.v23i1.13602