Using a Recursive Neural Network to Learn an Agent's Decision Model for Plan Recognition
Bisson, Francis (Université de Sherbrooke) | Larochelle, Hugo (Université de Sherbrooke) | Kabanza, Froduald (Université de Sherbrooke)
Plan recognition, the problem of inferring the goals or plans of an observed agent, is a key element of situation awareness in human-machine and machine-machine interactions for many applications. Some plan recognition algorithms require knowledge about the potential behaviours of the observed agent in the form of a plan library, together with a decision model about how the observed agent uses the plan library to make decisions. It is however difficult to elicit and specify the decision model a priori . In this paper, we present a recursive neural network model that learns such a decision model automatically. We discuss promising experimental results of the approach with comparisons to selected state-of-the-art plan recognition algorithms on three benchmark domains.
Jul-15-2015
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