4.4 Article

Extensive sampling for complete models of individual brains

Journal

CURRENT OPINION IN BEHAVIORAL SCIENCES
Volume 40, Issue -, Pages 45-51

Publisher

ELSEVIER
DOI: 10.1016/j.cobeha.2020.12.008

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Funding

  1. NSF [NSFIIS-1822683]
  2. [IIS-1822929]

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In designing cognitive neuroscience experiments, extensive sampling of experimental conditions is essential for understanding how human brains process complex stimuli. Contrary to conventional wisdom, sampling many individuals provides relatively few benefits and focusing on depth in individual brains is more productive for revealing general principles. Emphasizing on depth in individual brains is well-suited for capitalizing on the improvements in resolution and signal-to-noise ratio in modern neuroscientific techniques.
In designing cognitive neuroscience experiments, resource limitations induce a fundamental trade-off between sampling variation across individual brains and sampling variation across experimental conditions. Here, we argue that extensive sampling of experimental conditions is essential for understanding how human brains process complex stimuli, that a model of how any one brain does this is likely to generalize to most other brains, and that introducing large numbers of subjects into an analysis pool is likely to introduce unnecessary and undesirable variance. Thus, contrary to conventional wisdom, we believe that sampling many individuals provides relatively few benefits and that extensive sampling of a limited number of subjects is more productive for revealing general principles. Furthermore, an emphasis on depth in individual brains is well-suited for capitalizing on the improvements in resolution and signal-to-noise ratio that are being achieved in modern neuroscientific measurement techniques.

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