Computational approaches to habits in a model-free world

Publication date: April 2018 Source:Current Opinion in Behavioral Sciences, Volume 20 Author(s): Wolfgang M Pauli, Jeffrey Cockburn, Eva R Pool, Omar D Pérez, John P O’Doherty Model-free (MF) reinforcement learning (RL) algorithms account for a wealth of neuroscientific and behavioral data pertinent to habits; however, conspicuous disparities between model-predicted response patterns and experimental data have exposed the inadequacy of MF-RL to fully capture the domain of habitual behavior. We review several extensions to generic MF-RL algorithms that could narrow the gap between theory and empirical data. We discuss insights gained from extending RL algorithms to operate in complex environments with multidimensional continuous state spaces. We also review recent advances in hierarchical RL and their potential relevance to habits. Neurobiological evidence suggests that similar mechanisms for habitual learning and control may apply across diverse psychological domains.
Source: Current Opinion in Behavioral Sciences - Category: Psychiatry & Psychology Source Type: research