Human Goal Recognition as Bayesian Inference: Investigating the Impact of Actions, Timing, and Goal Solvability

February 16, 2024 Β· Declared Dead Β· πŸ› Adaptive Agents and Multi-Agent Systems

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Authors Chenyuan Zhang, Charles Kemp, Nir Lipovetzky arXiv ID 2402.10510 Category cs.HC: Human-Computer Interaction Cross-listed cs.AI Citations 5 Venue Adaptive Agents and Multi-Agent Systems Last Checked 4 months ago
Abstract
Goal recognition is a fundamental cognitive process that enables individuals to infer intentions based on available cues. Current goal recognition algorithms often take only observed actions as input, but here we use a Bayesian framework to explore the role of actions, timing, and goal solvability in goal recognition. We analyze human responses to goal-recognition problems in the Sokoban domain, and find that actions are assigned most importance, but that timing and solvability also influence goal recognition in some cases, especially when actions are uninformative. We leverage these findings to develop a goal recognition model that matches human inferences more closely than do existing algorithms. Our work provides new insight into human goal recognition and takes a step towards more human-like AI models.
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