Goal Recognition Design for General Behavioral Agents using Machine Learning

TMLR Paper4982 Authors

28 May 2025 (modified: 07 Jun 2025)Under review for TMLREveryoneRevisionsBibTeXCC BY 4.0
Abstract: Goal recognition design (GRD) aims to make limited modifications to decision-making environments to make it easier to infer the goals of agents acting within those environments. Although various research efforts have been made in goal recognition design, existing approaches are computationally demanding and often assume that agents are (near-)optimal in their decision-making. To address these limitations, we leverage machine learning methods for goal recognition design that can both improve run-time efficiency and account for agents with general behavioral models. Following existing literature, we use worst-case distinctiveness (wcd) as a measure of the difficulty in inferring the goal of an agent in a decision-making environment. Our approach begins by training a machine learning model to predict the wcd for a given environment and the agent behavior model. We then propose a gradient-based optimization framework that accommodates various constraints to optimize decision-making environments for enhanced goal recognition. Through extensive simulations, we demonstrate that our approach outperforms existing methods in reducing wcd and enhances runtime efficiency. Moreover, our approach also adapts to settings in which existing approaches do not apply, such as those involving flexible budget constraints, more complex environments, and suboptimal agent behavior. Finally, we conducted human-subject experiments that demonstrate that our method creates environments that facilitate efficient goal recognition from human decision-makers.
Submission Length: Regular submission (no more than 12 pages of main content)
Previous TMLR Submission Url: https://openreview.net/forum?id=CGfI6p1jfW
Changes Since Last Submission: - Adjusted the formatting and text fonts to align with the expected TMLR style - Made minor edits to the text, tables, and reorganized the figure positions to fit within 12 pages
Assigned Action Editor: ~Florian_Tobias_Schaefer1
Submission Number: 4982
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