Data in Brief (Dec 2018)

Dataset on the EEG time-frequency representation in children with different levels of mathematical achievement

  • Andrés A. González-Garrido,
  • Fabiola R. Gómez-Velázquez,
  • Rebeca Romo-Vázquez,
  • Hugo Vélez-Pérez,
  • Ricardo A. Salido-Ruiz,
  • Aurora Espinoza-Valdez,
  • Geisa B. Gallardo-Moreno,
  • Vanessa D. Ruiz-Stovel,
  • Alicia Martínez-Ramos

Journal volume & issue
Vol. 21
pp. 1071 – 1075

Abstract

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This article presents the data related to the research paper entitled “The analysis of EEG coherence reflects middle childhood differences in mathematical achievement” (González-Garrido et al., 2018). The dataset is derived from the electroencephalographic (EEG) records registered from a total of 60 8–9-years-old children with different math skill levels (High: HA, Average: AA, and Low Achievement: LA) while performing a symbolic magnitude comparison task. The average brain patterns are shown through Time-Frequency Representations (TFR) for each group, and also grand-mean amplitudes within specific EEG epochs in a 19-electrode array are provided. Making this information publicly available for further analyses could significantly contribute to a better understanding on how math achievement in children associates with cognitive processing strategies.