Structural Approach to Guiding a Present-Biased Agent
Tatiana Belova, Yuriy Dementiev, Artur Ignatiev, Danil Sagunov

TL;DR
This paper develops a fixed-parameter tractable algorithm for guiding present-biased agents in task graphs, analyzing its complexity with respect to graph parameters like treewidth, and establishing hardness results for simpler cases.
Contribution
It provides a comprehensive algorithmic framework and complexity analysis for guiding present-biased agents, extending prior models with new tractability results and hardness proofs.
Findings
Fixed-parameter tractable algorithm for treewidth and path costs
Hardness results for simple graph structures
Delimitation of tractable and intractable problem regions
Abstract
Time-inconsistent behavior, such as procrastination or abandonment of long-term goals, arises when agents evaluate immediate outcomes disproportionately higher than future ones. This leads to globally suboptimal behavior, where plans are frequently revised or abandoned entirely. In the influential model of Kleinberg and Oren (2014) such behavior is modeled by a present-biased agent navigating a task graph toward a goal, making locally optimal decisions at each step based on discounted future costs. As a result, the agent may repeatedly deviate from initial plans. Recent work by Belova et al. (2024) introduced a two-agent extension of this model, where a fully-aware principal attempts to guide the present-biased agent through a specific set of critical tasks without causing abandonment. This captures a rich class of principal-agent dynamics in behavioral settings. In this paper, we…
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Taxonomy
TopicsConstraint Satisfaction and Optimization · Reinforcement Learning in Robotics · Optimization and Search Problems
