Using reinforcement learning models in social neuroscience: frameworks, pitfalls and suggestions of best practices

Author:

Zhang Lei12ORCID,Lengersdorff Lukas12,Mikus Nace1,Gläscher Jan3,Lamm Claus124

Affiliation:

1. Neuropsychopharmacology and Biopsychology Unit, Department of Cognition, Emotion, and Methods in Psychology, Faculty of Psychology, University of Vienna, Vienna 1010, Austria

2. Social, Cognitive and Affective Neuroscience Unit, Department of Cognition, Emotion, and Methods in Psychology, Faculty of Psychology, University of Vienna, Vienna 1010, Austria

3. Institute of Systems Neuroscience, University Medical Center Hamburg-Eppendorf, Hamburg 20246, Germany

4. Vienna Cognitive Science Hub, University of Vienna, Vienna 1010, Austria

Abstract

Abstract The recent years have witnessed a dramatic increase in the use of reinforcement learning (RL) models in social, cognitive and affective neuroscience. This approach, in combination with neuroimaging techniques such as functional magnetic resonance imaging, enables quantitative investigations into latent mechanistic processes. However, increased use of relatively complex computational approaches has led to potential misconceptions and imprecise interpretations. Here, we present a comprehensive framework for the examination of (social) decision-making with the simple Rescorla–Wagner RL model. We discuss common pitfalls in its application and provide practical suggestions. First, with simulation, we unpack the functional role of the learning rate and pinpoint what could easily go wrong when interpreting differences in the learning rate. Then, we discuss the inevitable collinearity between outcome and prediction error in RL models and provide suggestions of how to justify whether the observed neural activation is related to the prediction error rather than outcome valence. Finally, we suggest posterior predictive check is a crucial step after model comparison, and we articulate employing hierarchical modeling for parameter estimation. We aim to provide simple and scalable explanations and practical guidelines for employing RL models to assist both beginners and advanced users in better implementing and interpreting their model-based analyses.

Funder

Austrian Science Fund

Vienna Science and Technology Fund

Collaborative Research in Computational Neuroscience

Collaborative Research Center ‘Cross-modal learning’

Computational Neuroscience

China Postdoctoral Science Foundation

Ministry of Education in China Project of Humanities and Social Sciences

the University Medical Center Hamburg-Eppendorf, National Natural Science Foundation of China

International Research Training Groups ‘CINACS’

Publisher

Oxford University Press (OUP)

Subject

Cognitive Neuroscience,Experimental and Cognitive Psychology,General Medicine

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