The application of naive bayes method for final project topic selection within the project-based learning framework in the data mining course
-
Published: May 15, 2024
-
Page: 243-249
Abstract
This study aims to explore the potential application of the Naive Bayes Method in predicting the determination of final project topics for students within the context of project-based learning (PBL) in the Data Mining course. Adopting an observational quantitative approach, the research involved 34 students from the Educational Technology Informatics Study Program at Padang State University between 2013-2015 as research subjects. The sampling technique employed was stratified random sampling, aligning with the research findings. The study's results indicate that the Naive Bayes Method is proficient in providing accurate predictions concerning the determination of final project topics, with significant accuracy, precision, and recall values. Moreover, the integration with project-based learning (PjBL) approach effectively enhances the authenticity and relevance of the learning experience for students, further substantiating the effectiveness of Project-Based Learning (PjBL).
- Naive Bayes Method
- Final Project Topic
- Project-Based Learning
- Data Mining
- Students
- Adadi, A. (2021). A survey on data‐efficient algorithms in big data era. Journal of Big Data, 8(1), 24. https://doi.org/10.1186/s40537-021-00419-9
- Alyahyan, E., & Düştegör, D. (2020). Predicting academic success in higher education: literature review and best practices. International Journal of Educational Technology in Higher Education, 17(1), 3. https://doi.org/10.1186/s41239-020-0177-7
- Bošnjaković, N., & Đurđević Babić, I. (2023). Systematic Review on Educational Data Mining in Educational Gamification. Technology, Knowledge and Learning. https://doi.org/10.1007/s10758-023-09686-2
- Charitopoulos, A., Rangoussi, M., & Koulouriotis, D. (2020). On the Use of Soft Computing Methods in Educational Data Mining and Learning Analytics Research: a Review of Years 2010–2018. International Journal of Artificial Intelligence in Education, 30(3), 371–430. https://doi.org/10.1007/s40593-020-00200-8
- Chen, S., Webb, G. I., Liu, L., & Ma, X. (2020). A novel selective naïve Bayes algorithm. Knowledge-Based Systems, 192, 105361. https://doi.org/https://doi.org/10.1016/j.knosys.2019.105361
- Creswell, J. W., & Creswell, J. D. (2018). Mixed Methods Procedures. In Research Defign: Qualitative, Quantitative, and Mixed M ethods Approaches.
- Dixit, A., Mani, A., & Bansal, R. (2020). Feature selection for text and image data using differential evolution with SVM and Naïve Bayes classifiers. Engineering Journal, 24(5), 161–172. https://doi.org/10.4186/ej.2020.24.5.161
- Egwim, C. N., Alaka, H., Toriola-Coker, L. O., Balogun, H., & Sunmola, F. (2021). Applied artificial intelligence for predicting construction projects delay. Machine Learning with Applications, 6, 100166. https://doi.org/https://doi.org/10.1016/j.mlwa.2021.100166
- Ikegwu, A. C., Nweke, H. F., & Anikwe, C. V. (2023). Recent trends in computational intelligence for educational big data analysis. Iran Journal of Computer Science. https://doi.org/10.1007/s42044-023-00158-5
- Kukkar, A., Mohana, R., Sharma, A., & Nayyar, A. (2023). Prediction of student academic performance based on their emotional wellbeing and interaction on various e-learning platforms. Education and Information Technologies, 28(8), 9655–9684. https://doi.org/10.1007/s10639-022-11573-9
- Kurniawan, Y. I., Cahyono, T., Nofiyati, Maryanto, E., Fadli, A., & Indraswari, N. R. (2020). Preprocessing Using Correlation Based Features Selection on Naive Bayes Classification. IOP Conference Series: Materials Science and Engineering, 982(1). https://doi.org/10.1088/1757-899X/982/1/012012
- Shafiq, M., Alghamedy, F., Jamal, N., Kamal, T., Daradkeh, & Shabaz, D. M. (2023). Scientific programming using optimized machine learning techniques for software fault prediction to improve software quality. IET Software, 17, n/a-n/a. https://doi.org/10.1049/sfw2.12091
- Siva Subramanian, R., Prabha, D., Aswini, J., & Maheswari, B. (2022). Evaluation of Different Variable Selection Approaches with Naive Bayes to Improve the Customer Behavior Prediction BT - Inventive Computation and Information Technologies (S. Smys, V. E. Balas, & R. Palanisamy (eds.); pp. 181–201). Springer Nature Singapore.
- Tran, P. H., Ahmadi Nadi, A., Nguyen, T. H., Tran, K. D., & Tran, K. P. (2022). Application of Machine Learning in Statistical Process Control Charts: A Survey and Perspective BT - Control Charts and Machine Learning for Anomaly Detection in Manufacturing (K. P. Tran (ed.); pp. 7–42). Springer International Publishing. https://doi.org/10.1007/978-3-030-83819-5_2
- Wahyudi, W., Nurhayati, N., & Saputri, D. F. (2022). Effectiveness of Problem Solving-based Optics Module in Improving Higher Order Thinking Skills of Prospective Physics Teachers. Jurnal Penelitian Pendidikan IPA, 8(4), 2285–2293. https://doi.org/10.29303/jppipa.v8i4.1860
- Wickramasinghe, I., & Kalutarage, H. (2021). Naive Bayes: applications, variations and vulnerabilities: a review of literature with code snippets for implementation. Soft Computing, 25(3), 2277–2293. https://doi.org/10.1007/s00500-020-05297-6
- Yağcı, M. (2022). Educational data mining: prediction of students’ academic performance using machine learning algorithms. Smart Learning Environments, 9(1), 11. https://doi.org/10.1186/s40561-022-00192-z
- Zotou, M., Tambouris, E., & Tarabanis, K. (2020). Data-driven problem based learning: enhancing problem based learning with learning analytics. Educational Technology Research and Development, 68(6), 3393–3424. https://doi.org/10.1007/s11423-020-09828-8