On Agentic Behavioral Modeling
Dirk Ostwald, Rasmus Bruckner, Franziska Usée, Belinda Fleischmann, Joram Soch + 1 more
TLDR
Introduces Agentic Behavioral Modeling (ABM) to bridge AI agents and human behavior analysis, evaluating AI models as cognitive hypotheses.
Key contributions
- Formalizes ABM, treating AI agents as generative hypotheses for human cognitive mechanisms.
- Applies ABM to perceptual discrimination and two-armed bandit tasks, deriving explicit log-likelihoods.
- Shows Rescorla-Wagner learning's equivalence to Bayesian inference and offers agent-centric psychometrics.
Why it matters
This paper provides a crucial framework for Agentic Behavioral Modeling (ABM), bridging the gap between AI models and human behavioral data. It offers a concrete methodology to test AI agents as hypotheses for cognitive mechanisms. This work lays a foundational path for applying ABM in cognitive behavioral science.
Original Abstract
Integrating theoretical neuroscience, decision theory, and probabilistic inference offers a promising route to understanding human cognition, yet concrete methodological bridges between agentic AI models and behavioral data analysis remain formally underdeveloped. We advance this synthesis under the framework of agentic behavioral modeling (ABM), which treats artificial agents as latent, generative hypotheses about cognitive mechanisms and evaluates them by their statistical adequacy in explaining human behavior. After outlining its conceptual foundations, we apply the framework to two minimal laboratory paradigms: a binary perceptual contrast-discrimination task and a symmetric two-armed bandit learning task. We formalize each task-agent-data system as a joint probability model, derive explicit conditional log-likelihoods for behavioral inference, validate different model variants using model and parameter recovery simulations, and evaluate them in light of empirical data. Using these minimal examples, we provide an agent-centric interpretation of the psychometric function, derive optimal policies for both tasks, and show the equivalence between Rescorla-Wagner learning and Bayesian inference in symmetric bandits. More broadly, this work may serve as a conceptual and practical foundation for applying ABM to cognitive behavioral science.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.