Journal of Intelligence (Dec 2022)

Inferring Cognitive Abilities from Response Times to Web-Administered Survey Items in a Population-Representative Sample

  • Doerte U. Junghaenel,
  • Stefan Schneider,
  • Bart Orriens,
  • Haomiao Jin,
  • Pey-Jiuan Lee,
  • Arie Kapteyn,
  • Erik Meijer,
  • Elizabeth Zelinski,
  • Raymond Hernandez,
  • Arthur A. Stone

DOI
https://doi.org/10.3390/jintelligence11010003
Journal volume & issue
Vol. 11, no. 1
p. 3

Abstract

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Monitoring of cognitive abilities in large-scale survey research is receiving increasing attention. Conventional cognitive testing, however, is often impractical on a population level highlighting the need for alternative means of cognitive assessment. We evaluated whether response times (RTs) to online survey items could be useful to infer cognitive abilities. We analyzed >5 million survey item RTs from >6000 individuals administered over 6.5 years in an internet panel together with cognitive tests (numerical reasoning, verbal reasoning, task switching/inhibitory control). We derived measures of mean RT and intraindividual RT variability from a multilevel location-scale model as well as an expanded version that separated intraindividual RT variability into systematic RT adjustments (variation of RTs with item time intensities) and residual intraindividual RT variability (residual error in RTs). RT measures from the location-scale model showed weak associations with cognitive test scores. However, RT measures from the expanded model explained 22–26% of the variance in cognitive scores and had prospective associations with cognitive assessments over lag-periods of at least 6.5 years (mean RTs), 4.5 years (systematic RT adjustments) and 1 year (residual RT variability). Our findings suggest that RTs in online surveys may be useful for gaining information about cognitive abilities in large-scale survey research.

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