Evaluating Student Knowledge Assessment Using Machine Learning Techniques

被引:1
|
作者
Alruwais, Nuha [1 ]
Zakariah, Mohammed [2 ]
机构
[1] King Saud Univ, Coll Appl Studies & Community Serv, Dept Comp Sci & Engn, POB 22459, Riyadh 11495, Saudi Arabia
[2] King Saud Univ, Coll Comp Sci & Informat, Dept Comp Sci, POB 11442, Riyadh 11574, Saudi Arabia
关键词
student knowledge assessment; machine learning; gradient boosting machine; logistic regression; predictive features; performance prediction; HIGHER-EDUCATION; PERFORMANCE; CLASSIFICATION; IMPACT;
D O I
10.3390/su15076229
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
The process of learning about a student's knowledge and comprehension of a particular subject is referred to as student knowledge assessment. It helps to identify areas where students need additional support or challenge and can be used to evaluate the effectiveness of instruction, make important decisions such as on student placement and curriculum development, and monitor the quality of education. Evaluating student knowledge assessment is essential to measuring student progress, informing instruction, and providing feedback to improve student performance and enhance the overall teaching and learning experience. This research paper is designed to create a machine learning (ML)-based system that assesses student performance and knowledge throughout the course of their studies and pinpoints the key variables that have the most significant effects on that performance and expertise. Additionally, it describes the impact of running models with data that only contains key features on their performance. To classify the students, the paper employs seven different classifiers, including support vector machines (SVM), logistic regression (LR), random forest (RF), decision tree (DT), gradient boosting machine (GBM), Gaussian Naive Bayes (GNB), and multi-layer perceptron (MLP). This paper carries out two experiments to see how best to replicate the automatic classification of student knowledge. In the first experiment, the dataset (Dataset 1) was used in its original state, including all five properties listed in the dataset, to evaluate the performance indicators. In the second experiment, the least correlated variable was removed from the dataset to create a smaller dataset (Dataset 2), and the same set of performance indicators was evaluated. Then, the performance indicators using Dataset 1 and Dataset 2 were compared. The GBM exhibited the highest prediction accuracy of 98%, according to Dataset 1. In terms of prediction error, the GBM also performed well. The accuracy of optimistic forecasts on student performance, denoted as the performance indicator 'precision', was highest in GBM at 99%, while DT, RF, and SVM were 98% accurate in their optimistic forecasts for Dataset 1. The second experiment's findings demonstrated that practically no classifiers showed appreciable improvements in prediction accuracy with a reduced feature set in Dataset 2. It showed that the time required for related learning objects and the knowledge level corresponding to a goal learning object have less impact.
引用
收藏
页数:25
相关论文
共 50 条
  • [1] Using machine learning techniques for evaluating tomato ripeness
    El-Bendary, Nashwa
    El Hariri, Esraa
    Hassanien, Aboul Ella
    Badr, Amr
    EXPERT SYSTEMS WITH APPLICATIONS, 2015, 42 (04) : 1892 - 1905
  • [2] Analysis of Student Study of Virtual Learning Using Machine Learning Techniques
    Singh, Neha
    Chandra, Umesh
    INTERNATIONAL JOURNAL OF SOFTWARE SCIENCE AND COMPUTATIONAL INTELLIGENCE-IJSSCI, 2022, 14 (01):
  • [3] Preventing student dropout in distance learning using machine learning techniques
    Kotsiantis, SB
    Pierrakeas, CJ
    Pintelas, PE
    KNOWLEDGE-BASED INTELLIGENT INFORMATION AND ENGINEERING SYSTEMS, PT 2, PROCEEDINGS, 2003, 2774 : 267 - 274
  • [4] Enrich Ayurveda knowledge using machine learning techniques
    Roopashree, S.
    Anitha, J.
    INDIAN JOURNAL OF TRADITIONAL KNOWLEDGE, 2020, 19 (04): : 813 - 820
  • [5] Quality Assessment of Crops using Machine Learning Techniques
    Chokey, Tenzin
    Jain, Sarika
    PROCEEDINGS 2019 AMITY INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE (AICAI), 2019, : 259 - 263
  • [6] Knowledge Discovery in Engineering Applications Using Machine Learning Techniques
    Kubik, Christian
    Molitor, Dirk Alexander
    Becker, Marco
    Groche, Peter
    JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2022, 144 (09):
  • [7] Prediction of Student's Educational Performance Using Machine Learning Techniques
    Rao, B. Mallikarjun
    Murthy, B. V. Ramana
    DATA ENGINEERING AND COMMUNICATION TECHNOLOGY, ICDECT-2K19, 2020, 1079 : 429 - 440
  • [8] Early Detection of Prone to Failure Student Using Machine Learning Techniques
    Kadam, Prabha Siddhesh
    Vaze, Vinod Moreshwar
    BIOSCIENCE BIOTECHNOLOGY RESEARCH COMMUNICATIONS, 2021, 14 (05): : 36 - 39
  • [9] Using Machine Learning Techniques to Earlier Predict Student's Performance
    Tanuar, Evawaty
    Heryadi, Yaya
    Lukas
    Abbas, Bahtiar Saleh
    Gaol, Ford Lumban
    2018 INDONESIAN ASSOCIATION FOR PATTERN RECOGNITION INTERNATIONAL CONFERENCE (INAPR), 2018, : 85 - 89
  • [10] Data Balancing Techniques for Predicting Student Dropout Using Machine Learning
    Mduma, Neema
    DATA, 2023, 8 (03)