| Literature DB >> 28732273 |
Scott W Linderman1, Samuel J Gershman2.
Abstract
Computational neuroscience is, to first order, dominated by two approaches: the 'bottom-up' approach, which searches for statistical patterns in large-scale neural recordings, and the 'top-down' approach, which begins with a theory of computation and considers plausible neural implementations. While this division is not clear-cut, we argue that these approaches should be much more intimately linked. From a Bayesian perspective, computational theories provide constrained prior distributions on neural data-albeit highly sophisticated ones. By connecting theory to observation via a probabilistic model, we provide the link necessary to test, evaluate, and revise our theories in a data-driven and statistically rigorous fashion. This review highlights examples of this theory-driven pipeline for neural data analysis in recent literature and illustrates it with a worked example based on the temporal difference learning model of dopamine.Entities:
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Year: 2017 PMID: 28732273 PMCID: PMC5660645 DOI: 10.1016/j.conb.2017.06.004
Source DB: PubMed Journal: Curr Opin Neurobiol ISSN: 0959-4388 Impact factor: 6.627