• Media type: Text; E-Article; Electronic Conference Proceeding
  • Title: Predicting Math Success in an Online Tutoring System Using Language Data and Click-Stream Variables: A Longitudinal Analysis
  • Contributor: Crossley, Scott [Author]; Karumbaiah, Shamya [Author]; Ocumpaugh, Jaclyn [Author]; Labrum, Matthew J. [Author]; Baker, Ryan S. [Author]
  • Published: Schloss Dagstuhl – Leibniz-Zentrum für Informatik, 2019
  • Language: English
  • DOI: https://doi.org/10.4230/OASIcs.LDK.2019.25
  • Keywords: online tutoring systems ; math education ; Natural language processing ; text analytics ; click-stream variables
  • Origination:
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  • Description: Previous studies have demonstrated strong links between students' linguistic knowledge, their affective language patterns and their success in math. Other studies have shown that demographic and click-stream variables in online learning environments are important predictors of math success. This study builds on this research in two ways. First, it combines linguistics and click-stream variables along with demographic information to increase prediction rates for math success. Second, it examines how random variance, as found in repeated participant data, can explain math success beyond linguistic, demographic, and click-stream variables. The findings indicate that linguistic, demographic, and click-stream factors explained about 14% of the variance in math scores. These variables mixed with random factors explained about 44% of the variance.
  • Access State: Open Access