Learning to use past evidence in a sophisticated world model

by Sanjeevan Ahilan, Rebecca B. Solomon, Yannick-Andr é Breton, Kent Conover, Ritwik K. Niyogi, Peter Shizgal, Peter Dayan Humans and other animals are able to discover underlying statistical structure in their environments and exploit it to achieve efficient and effective performance. However, such structure is often difficult to learn and use because it is obscure, involving long-range temporal dependencies. Here, w e analysed behavioural data from an extended experiment with rats, showing that the subjects learned the underlying statistical structure, albeit suffering at times from immediate inferential imperfections as to their current state within it. We accounted for their behaviour using a Hidden Markov Mo del, in which recent observations are integrated with evidence from the past. We found that over the course of training, subjects came to track their progress through the task more accurately, a change that our model largely attributed to improved integration of past evidence. This learning reflecte d the structure of the task, decreasing reliance on recent observations, which were potentially misleading.
Source: PLoS Computational Biology - Category: Biology Authors: Source Type: research