A Decision-Theoretic Model of Assistance

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A Decision-Theoretic Model of Assistance
There is a growing interest in intelligent assistants for a variety of applications from organizing tasks for knowledge workers to helping people with dementia. In this paper, we present and evaluate a decision-theoretic framework that captures the general notion of assistance. The objective is to observe a goal-directed agent and to select assistive actions in order to minimize the overall cost. We model the problem as an assistant POMDP where the hidden state corresponds to the agent’s unobserved goals. This formulation allows us to exploit domain models for both estimating the agent’s goals and selecting assistive action. In addition, the formulation naturally handles uncertainty, varying action costs, and customization to specific agents via learning. We argue that in many domains myopic heuristics will be adequate for selecting actions in the assistant POMDP and present two such heuristics. We evaluate our approach in two domains where human subjects perform tasks in game-li...
Alan Fern, Sriraam Natarajan, Kshitij Judah, Prasa
Added 29 Oct 2010
Updated 29 Oct 2010
Type Conference
Year 2007
Authors Alan Fern, Sriraam Natarajan, Kshitij Judah, Prasad Tadepalli
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