• Title of article

    On Characterization of Norm-Referenced Achievement Grading Schemes toward Explainability and Selectability

  • Author/Authors

    Banditwattanawong, Thepparit Department of Computer Science - Faculty of Science - Kasetsart University, Bangkok, Thailand , Masdisornchote, Masawee School of Information Technology - Sripatum University, Bangkok,Thailand

  • Pages
    13
  • From page
    1
  • To page
    13
  • Abstract
    Grading is the process of interpreting learning competence to inform learners and instructors of the current learning ability levels and necessary improvement. For norm-referenced grading, the instructors use a conventionally statistical method, z score. It is difficult for such a method to achieve explainable grade discrimination to resolve dispute between learners and instructors. To solve such difficulty, this paper proposes a simple and efficient algorithm for explainable norm-referenced grading. Moreover, the rise of artificial intelligence nowadays makes machine learning techniques attractive to the norm-referenced grading in general. This paper also investigates two popular clustering methods, K-means and partitioning around medoids. The experiment relied on the data sets of various score distributions and a metric, namely, Davies–Bouldin index. The comparative evaluation reveals that our algorithm overall outperforms the other three methods and is appropriate for all kinds of data sets in almost all cases. Our findings however lead to a practically useful guideline for the selection of appropriate grading methods including both clustering methods and z score.
  • Farsi abstract
    فاقد چكيده فارسي
  • Keywords
    no keywords
  • Journal title
    Applied Computational Intelligence and Soft Computing
  • Serial Year
    2021
  • Record number

    2604888