Reinforcement Learning Models of Human Behavior: Reward Processing in Mental Disorders
Lin, Baihan, Cecchi, Guillermo, Bouneffouf, Djallel, Reinen, Jenna, Rish, Irina
–arXiv.org Artificial Intelligence
For AI community, the development of agents that react differently to different types of rewards can enable us to understand a wide spectrum of multi-agent interactions in complex real-world socioeconomic systems. Empirically, the proposed model outperforms Q-Learning and Double Q-Learning in artificial scenarios with certain reward distributions and real-world human decision making gambling tasks. Moreover, from the behavioral modeling perspective, our parametric framework can be viewed as a first step towards a unifying computational model capturing reward processing abnormalities across multiple mental conditions and user preferences in long-term recommendation systems.
arXiv.org Artificial Intelligence
Jun-28-2019