How the brain forms, tunes, and uses predictive models that specify the causal links between stimuli in the environment, our choices, and their outcomes is a fundamental question in Psychology and Neuroscience. A great deal of progress has been made identifying the neural computations theorized to form and update predictive models. This research has played a central role in the rise of computational psychiatry, but its relevance to clinical disorders has been limited in part by the use of relatively simple learning/choice paradigms that capture only a narrow subset of the structural complexity of real-world learning. In order to make sound predictions in a complex world, the brain needs to attribute good and bad outcomes to their most likely causes, a problem known as ?credit assignment?. There is little understanding of how outcomes are attributed to their most likely causes in structured real-world environments. Most real-world learning occurs in complex and structured environments, such as hierarchical systems (e.g. seasonal events, social hierarchies, contextual rules, etc.). Recent evidence suggests that humans can use an understanding of the environment?s causal structure to attribute outcomes to their most likely causes (which I call ?model-based credit assignment)?, rather than simply attributing them to the most recently experienced stimuli and choices that were made (which I call ?model-free? credit assignment), as standard models have proposed. The purpose of the present proposal is to develop the first neural model of model-based credit assignment. We hypothesize that the brain reinstates the cause when a reinforcement outcome is experienced to associate with the outcome. In other words, so that ?fire-together/wire-together? plasticity mechanisms can link a choice with an outcome, the choice representation and the outcome representation must both be active at the same time even though the causal choice or event may have actually occurred some time beforehand. To test this and other predictions, we will integrate mathematical descriptions of learning and decision making with ?representational? analysis methods that allow inferences to be made about the information represented in brain areas, applied to fMRI and scalp EEG data. fMRI will reveal how neural learning signals update neural representations of likely causes during learning, while EEG will reveal the timing of the hypothesized reinstatement. These experiments will set the stage to apply the insights gained to investigate how the brain attributes outcomes to more abstract ?latent? causes in hierarchically structured environments prevalent in the real world. The proposed project will thus move this general program of research strategy toward learning tasks that better reflect the complexity and structure in many real-world learning/choice situations important for both typical and atypical individuals.

Public Health Relevance

Research into how the brain forms and tunes predictive models that specify the causal relationships between stimuli in the environment, our actions, and their outcomes has made dramatic strides by identifying key learning computations in the brain in both typical and atypical individuals. However, the application of this research to clinical disorders has been limited by use of relatively simple learning/choice tasks that do not capture much of the structural complexity of real-world learning. The present project aims to develop the first neural model specifying how reinforcement outcomes are attributed to their most likely causes in such structured environments.

Agency
National Institute of Health (NIH)
Institute
National Institute of Mental Health (NIMH)
Type
High Priority, Short Term Project Award (R56)
Project #
1R56MH119116-01A1
Application #
10064687
Study Section
Cognition and Perception Study Section (CP)
Program Officer
Buhring, Bettina D
Project Start
2020-01-10
Project End
2021-12-31
Budget Start
2020-01-10
Budget End
2020-12-31
Support Year
1
Fiscal Year
2020
Total Cost
Indirect Cost
Name
University of California Davis
Department
Psychology
Type
Schools of Arts and Sciences
DUNS #
047120084
City
Davis
State
CA
Country
United States
Zip Code
95618