Frontiers in Human Neuroscience (Jun 2015)

A time-series approach to random number generation: Using recurrence quantification analysis to capture executive behavior

  • Wouter eOomens,
  • Wouter eOomens,
  • Wouter eOomens,
  • Joseph Hubertus Roald Maes,
  • Fred eHasselman,
  • Fred eHasselman,
  • Jos I.M. Egger,
  • Jos I.M. Egger,
  • Jos I.M. Egger

DOI
https://doi.org/10.3389/fnhum.2015.00319
Journal volume & issue
Vol. 9

Abstract

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The concept of executive functions plays a prominent role in contemporary experimental and clinical studies on cognition. One paradigm used in this framework is the random number generation (RNG) task, the execution of which demands aspects of executive functioning, specifically inhibition and working memory. Data from the RNG task are best seen as a series of successive events. However, traditional RNG measures that are used to quantify executive functioning are mostly summary statistics referring to deviations from mathematical randomness. In the current study, we explore the utility of recurrence quantification analysis (RQA), a nonlinear method that keeps the entire sequence intact, as a better way to describe executive functioning compared to traditional measures. To this aim, 242 first- and second-year students completed a non-paced RNG task. Principal component analysis of their data showed that traditional and RQA measures convey more or less the same information. However, RQA measures do so more parsimoniously and have a better interpretation.

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