Publication | Open Access
Strategic Tasks for Explainable Reinforcement Learning
11
Citations
4
References
2019
Year
Artificial IntelligenceGame AiEngineeringMachine LearningGame TheoryIntelligent SystemsStrategic TasksData ScienceRobot LearningGeneral Game PlayingCognitive ScienceStrategyComputer ScienceSequential Decision MakingGamesExploration V ExploitationReward HackingDeep Reinforcement LearningArcade Learning EnvironmentBusinessExplainable Artificial IntelligenceSequential Decision
Commonly used sequential decision making tasks such as the games in the Arcade Learning Environment (ALE) provide rich observation spaces suitable for deep reinforcement learning. However, they consist mostly of low-level control tasks which are of limited use for the development of explainable artificial intelligence(XAI) due to the fine temporal resolution of the tasks. Many of these domains also lack built-in high level abstractions and symbols. Existing tasks that provide for both strategic decision-making and rich observation spaces are either difficult to simulate or are intractable. We provide a set of new strategic decision-making tasks specialized for the development and evaluation of explainable AI methods, built as constrained mini-games within the StarCraft II Learning Environment.
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