Anomaly detection in the course evaluation process: a learning analytics–based approach

Author:

Vaidya Anagha,Sharma Sarika

Abstract

Purpose Course evaluations are formative and are used to evaluate learnings of the students for a course. Anomalies in the evaluation process can lead to a faulty educational outcome. Learning analytics and educational data mining provide a set of techniques that can be conveniently applied to extensive data collected as part of the evaluation process to ensure remedial actions. This study aims to conduct an experimental research to detect anomalies in the evaluation methods. Design/methodology/approach Experimental research is conducted with scientific approach and design. The researchers categorized anomaly into three categories, namely, an anomaly in criteria assessment, subject anomaly and anomaly in subject marks allocation. The different anomaly detection algorithms are used to educate data through the software R, and the results are summarized in the tables. Findings The data points occurring in all algorithms are finally detected as an anomaly. The anomaly identifies the data points that deviate from the data set’s normal behavior. The subject which is consistently identified as anomalous by the different techniques is marked as an anomaly in evaluation. After identification, one can drill down to more details into the title of anomalies in the evaluation criteria. Originality/value This paper proposes an analytical model for the course evaluation process and demonstrates the use of actionable analytics to detect anomalies in the evaluation process.

Publisher

Emerald

Subject

Education,Computer Science (miscellaneous)

Reference50 articles.

1. Educational data mining and learning analytics for 21st century higher education: a review and synthesis;Telematics and Informatics,2019

2. Analyzing undergraduate students' performance using educational data mining;Computers and Education,2017

3. Using Bloom's taxonomy to evaluate the cognitive levels of master class textbook's questions;English Language Teaching,2015

4. Educational data mining versus learning analytics: a review of publications from 2015 to 2019;Interactive Learning Environments,2021

5. Outlier detection: methods, models, and classification;ACM Computing Surveys,2020

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