• DocumentCode
    120679
  • Title

    An application of classification models to predict learner progression in tertiary education

  • Author

    Gray, Geraldine ; McGuinness, Cameron ; Owende, Philip

  • Author_Institution
    Dept. of Inf., Inst. of Technol. Blanchardstown, Dublin, Ireland
  • fYear
    2014
  • fDate
    21-22 Feb. 2014
  • Firstpage
    549
  • Lastpage
    554
  • Abstract
    This paper reports on an application of classification models to identify college students at risk of failing in the first year of study. Data was gathered from three student cohorts in the academic years 2010 through 2012. Students within the cohorts were sampled from a range of academic disciplines (n=1074), and were diverse in their academic backgrounds and abilities. Metrics used included data that are typically available to colleges such as age, gender and prior academic performance. The study also considered psychometric indicators that can be assessed in the early stages after enrolment, specifically, personality, motivation and learning strategies. Six classification algorithms were considered. Model accuracy was assessed using cross validation and was compared to outcomes when models were applied to a subsequent academic year. It was found that mature students were more complex to model than younger students. Furthermore, 10-fold cross validation accurately estimated model performance when modeling younger students only, but over-estimated model accuracy when modeling mature students.
  • Keywords
    data mining; educational administrative data processing; educational courses; educational institutions; pattern classification; psychometric testing; 10-fold cross validation; academic abilities; academic backgrounds; academic disciplines; classification models; college student identification; data gathering; learner progression prediction; mature students; model performance estimation; psychometric indicators; student academic performance; student age; student cohorts; student enrolment; student gender; student learning strategy; student motivation strategy; student personality strategy; tertiary education; younger students; Accuracy; Correlation; Data models; Educational institutions; Predictive models; Support vector machines; academic performance; classification; cross validation; educational data mining; learning styles; model evaluation; motivation; personality; self-regulated learning;
  • fLanguage
    English
  • Publisher
    ieee
  • Conference_Titel
    Advance Computing Conference (IACC), 2014 IEEE International
  • Conference_Location
    Gurgaon
  • Print_ISBN
    978-1-4799-2571-1
  • Type

    conf

  • DOI
    10.1109/IAdCC.2014.6779384
  • Filename
    6779384