Hybrid data analytic technique for grading fairness

Author:

Banditwattanawong Thepparit,Jankasem Arnon Marco PoloORCID,Masdisornchote MasaweeORCID

Abstract

PurposeFair grading produces learning ability levels that are understandable and acceptable to both learners and instructors. Norm-referenced grading can be achieved by several means such as z score, K-means and a heuristic. However, these methods typically deliver the varied degrees of grading fairness depending on input score data.Design/methodology/approachTo attain the fairest grading, this paper proposes a hybrid algorithm that integrates z score, K-means and heuristic methods with a novel fairness objective function as a decision function.FindingsDepending on an experimented data set, each of the algorithm's constituent methods could deliver the fairest grading results with fairness degrees ranging from 0.110 to 0.646. We also pointed out key factors in the fairness improvement of norm-referenced achievement grading.Originality/valueThe main contributions of this paper are four folds: the definition of fair norm-referenced grading requirements, a hybrid algorithm for fair norm-referenced grading, a fairness metric for norm-referenced grading and the fairness performance results of the statistical, heuristic and machine learning methods.

Publisher

Emerald

Subject

Library and Information Sciences,Information Systems

Reference21 articles.

1. Evaluating student's performance using k-means clustering;International Journal of Computer Science And Technology,2013

2. Automatically constructing grade membership functions for students' evaluation for fuzzy grading systems,2006

3. Norm-referenced achievement grading: methods and comparison,2020

4. Norm-referenced achievement grading of normal, skewed, and imperfectly normal distributions based on machine learning versus statistical techniques,2020

5. On characterization of norm-referenced achievement grading schemes toward explainability and selectability;Applied Computational Intelligence and Soft Computing,2021

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