• DocumentCode
    3773571
  • Title

    Application of Naive Bayesian Classifier for Teaching Reform Courses Examination Data Analysis in China Open University System

  • Author

    Liu Fang;Zhang Luan-Qiao;Wang Ying;Lu Feng;Sun Fu-Wan;Zhang Shao-Gang;Wilton W. T. Fok;Vincent Tam;Jiaqu Yi

  • Author_Institution
    Res. Inst. of Open &
  • Volume
    2
  • fYear
    2015
  • Firstpage
    25
  • Lastpage
    29
  • Abstract
    Open education quality guarantee is a core issue in field of distance education. Data mining techniques are used to design effective teaching reform courses examination data analysis method would be a good way for checking teaching reform effects and could provide objective basis for open education quality assurance. This paper proposes a teaching reform courses examination data analysis solution based on Naive Bayesian classifier for checking the impacts of teaching reform measures act on open education quality. Naive Bayesian classifier is a famous classifying method, as a supervised learning, can extract valuable classifying rules by using data whose class label is known to train the classifier, and the trained classifier or classifying rules can be used to classify new data whose class label is unknown, and who is based on Bayes principal, has characteristics of accuracy and fast in aspect of classifying data in large scale database. Proposed solution´s effectiveness is verified by processing practical teaching reform courses examination data in China Open University system. Hidden rules in teaching reform courses examination data are revealed, and also changing conditions of examination data caused by teaching reform measures are presented, which would be valuable in aspect of modifying open education quality assurance measures.
  • Keywords
    "Education","Data analysis","Bayes methods","Data mining","Quality assurance","Databases"
  • Publisher
    ieee
  • Conference_Titel
    Computational Intelligence and Design (ISCID), 2015 8th International Symposium on
  • Print_ISBN
    978-1-4673-9586-1
  • Type

    conf

  • DOI
    10.1109/ISCID.2015.81
  • Filename
    7469052