سیویلیکا را در شبکه های اجتماعی دنبال نمایید.

Using Ensemble Machine Learning and Feature Engineering to Increase the Accuracy of Predicting Learners' Performance in an Online Educational Environment

Publish Year: 1403
Type: Journal paper
Language: English
View: 49

This Paper With 19 Page And PDF Format Ready To Download

Export:

Link to this Paper:

Document National Code:

JR_MEDIA-15-4_006

Index date: 31 December 2024

Using Ensemble Machine Learning and Feature Engineering to Increase the Accuracy of Predicting Learners' Performance in an Online Educational Environment abstract

Background: Online training has gained popularity as an effective teaching method, necessitating diligent monitoring of learner progress and engagement. The challenge of predicting academic performance in online courses is crucial for supporting learners at risk of academic loss. This study aimed to develop a robust model for predicting learners' performance using ensemble machine learning and feature engineering techniques.Methods: This research employed a classification approach based on the Digital Electronic Education and Design Suite (DEEDS) dataset, which records real-time interactions of learners within an online educational environment. The dataset analyzed in this research included activity logs from 115 undergraduate students majoring in computer engineering who participated in a digital electronics course at the University of Genoa, Italy, between September and December 2015. Various machine learning algorithms, including Random Forest (RF), Adaptive Boosting (AdaBoost), Gradient Boosting (GB), Light Gradient-Boosting Machine (LightGBM), and eXtreme Gradient Boosting (XGBoost), were applied. The study also utilized ensemble learning methods such as Boosting and Stacking to enhance prediction accuracy. Feature engineering techniques were implemented to extract and select relevant features from the dataset, leading to the development of a predictive model.Results: The proposed model achieved an accuracy of 97.43%, a precision of 96.20%, and an F1-score of 98.06%, indicating an acceptable predictive capability. Notably, the findings revealed that feature selection significantly enhanced performance; in the absence of feature selection, the accuracy dropped to 92.15%. Additionally, ensemble methods like Boosting and Stacking provided a 15% enhancement in prediction accuracy compared to traditional approaches. Overall, the integration of feature engineering and ensemble techniques acceptably optimized the model's ability to predict learners’ academic performance in online educational settings. Conclusion: This research validates the effectiveness of employing ensemble machine learning techniques and feature engineering in predicting learners’ academic performance in online education. Future studies should explore additional ensemble methods and incorporate diverse feature types to enhance prediction accuracy.

Using Ensemble Machine Learning and Feature Engineering to Increase the Accuracy of Predicting Learners' Performance in an Online Educational Environment Keywords:

Using Ensemble Machine Learning and Feature Engineering to Increase the Accuracy of Predicting Learners' Performance in an Online Educational Environment authors

Seyede Fatemeh Noorani

Department of Information Technology and Computer Engineering, Payame Noor University, Tehran, Iran

Maryam Karimi

Department of Computer Sciences, Faculty of Mathematical Sciences, Shahrkord, Iran

Zahra Gholijafari

Department of Information Technology and Computer Engineering, Payame Noor University, Tehran, Iran

مراجع و منابع این Paper:

لیست زیر مراجع و منابع استفاده شده در این Paper را نمایش می دهد. این مراجع به صورت کاملا ماشینی و بر اساس هوش مصنوعی استخراج شده اند و لذا ممکن است دارای اشکالاتی باشند که به مرور زمان دقت استخراج این محتوا افزایش می یابد. مراجعی که مقالات مربوط به آنها در سیویلیکا نمایه شده و پیدا شده اند، به خود Paper لینک شده اند :
Siemens G. Learning analytics: envisioning a research discipline and a ...
Chatti MA, Dyckhoff AL, Schroeder U, Thüs H. A reference ...
Qiu F, Zhang G, Sheng X, Jiang L, Zhu L, ...
Banihashem SK, Aliabadi K, Pourroostaei Ardakani S, Delaver A, Nili ...
Wang X, Zhao Y, Li C, Ren P. ProbSAP: A ...
Liu T, Li S. Performance Prediction for Higher Education Students ...
Yin C, Tang D, Zhang F, Tang Q, Feng Y, ...
Liang G, Jiang C, Ping Q, Jiang X. Academic performance ...
Batool S, Rashid J, Nisar MW, Kim J, Kwon H-Y, ...
Forero-Corba W, Bennasar FN. Techniques and applications of Machine Learning ...
Sarker S, Paul MK, Thasin STH, Hasan MAM. Analyzing students' ...
Maksud A, Nesar A. Machine learning approaches to digital learning ...
Vahdat M, Oneto L, Anguita D, Funk M, Rauterberg M, ...
Kou G, Xu Y, Peng Y, Shen F, Chen Y, ...
Zhang Y, Liu J, Shen W. A review of ensemble ...
Rane N, Choudhary SP, Rane J. Ensemble deep learning and ...
Mohammed A, Kora R. A comprehensive review on ensemble deep ...
Tomasevic N, Gvozdenovic N, Vranes S. An overview and comparison ...
Wan S, Yang H. Comparison among methods of ensemble learning. ...
Baig MA, Shaikh SA, Khatri KK, Shaikh MA, Khan MZ, ...
Brahim GB. Predicting student performance from online engagement activities using ...
Tan P-N, Steinbach M, Kumar V. Introduction to data mining. ...
Hussain M, Zhu W, Zhang W, Abidi SMR, Ali S. ...
Bolón-Canedo V, Alonso-Betanzos A. Ensembles for feature selection: A review ...
Mienye ID, Sun Y. A survey of ensemble learning: Concepts, ...
Ajibade SM, Ahmad NBB, Shamsuddin SM. Educational data mining: enhancement ...
نمایش کامل مراجع