4.7 Article

From Reactive to Active Sensing: A Survey on Information Gathering in Decision-theoretic Planning

Journal

ACM COMPUTING SURVEYS
Volume 55, Issue 13S, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3583068

Keywords

Decision-theoretic planning; information gathering; active sensing

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This article discusses traditional decision-theoretic planning and recent research on information gathering. It points out the limitation of traditional models in rewarding agents based on their knowledge of the environment. The article categorizes existing methods and suggests future research directions.
In traditional decision-theoretic planning, information gathering is a means to a goal. The agent receives information about its environment (state or observation) and uses it as a way to optimize a state-based reward function. Recent works, however, have focused on application domains in which information gathering is not only the mean but the goal itself. The agent must optimize its knowledge of the environment. However, traditional Markov-based decision-theoretic models cannot account for rewarding the agent based on its knowledge, which leads to the development of many approaches to overcome this limitation. We survey recent approaches for using decision-theoretic models in information-gathering scenarios, highlighting common practices and existing generic models, and show that existing methods can be categorized into three classes: reactive sensing, single-agent active sensing, and multi-agent active sensing. Finally, we highlight potential research gaps and suggest directions for future research.

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