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Noncooperative Human-AI Agent Dynamics

arXiv:2603.1691634.7h-index: 2Has Code
AI Analysis

It addresses the problem of modeling human-AI strategic interactions for researchers in AI and behavioral economics, but is incremental as it applies existing theories to new scenarios.

This paper investigates noncooperative interactions between AI agents using expected utility maximization and human agents modeled with Prospect Theory preferences in strategic games, finding patterns that include corroboration of known anomalies and unexpected behaviors through numerical simulations.

This paper investigates the dynamics of noncooperative interactions between artificial intelligence agents and human decision-makers in strategic environments. In particular, motivated by extensive literature in behavioral Economics, human agents are more faithfully modeled with respect to the state of the art using Prospect Theoretic preferences, while AI agents are modeled with standard expected utility maximization. Prospect Theory incorporates known cognitive heuristics employed by humans, including reference dependence and greater loss aversion relative to utility to relative gains. This paper runs different combinations of expected utility and prospect theoretic agents in a number of classic matrix games as well as examples specialized to tease out distinctions in strategic behavior with respect to preference functions, to explore the emergent behaviors from mixed population (human vs. AI) competition. Extensive numerical simulations are performed across AI, aware humans (those with full knowledge of the game structure and payoffs), and learning Prospect Agents (i.e., for AIs representing humans). A number of interesting observations and patterns show up, spanning barely distinguishable behavior, behavior corroborating Prospect preference anomalies in the theoretical literature, and unexpected surprises. Code can be found at https://github.com/dylanwaldner/noncooperative-human-AI.

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