| Literature DB >> 32224320 |
Shinsuke Suzuki1, John P O'Doherty2.
Abstract
Most of our waking time as human beings is spent interacting with other individuals. In order to make good decisions in this social milieu, it is often necessary to make inferences about the internal states, traits and intentions of others. Recently, some progress has been made toward uncovering the neural computations underlying human social decision-making by combining functional magnetic resonance neuroimaging (fMRI) with computational modeling of behavior. Modeling of behavioral data allows us to identify the key computations necessary for social decision-making and to determine how these computations are integrated. Furthermore, by correlating these variables against neuroimaging data, it has become possible to elucidate where in the brain various computations are implemented. Here we review the current state of knowledge in the domain of social computational neuroscience. Findings to date have emphasized that social decisions are driven by multiple computations conducted in parallel, and implemented in distinct brain regions. We suggest that further progress is going to depend on identifying how and where such variables get integrated in order to yield a coherent behavioral output.Entities:
Keywords: Computational neuroscience; Decision-making; Model-based fMRI; Reinforcement learning; Social cognition
Year: 2020 PMID: 32224320 PMCID: PMC7751985 DOI: 10.1016/j.cortex.2020.02.014
Source DB: PubMed Journal: Cortex ISSN: 0010-9452 Impact factor: 4.027