Title | Naïve Bayes for Detecting StudentâÂÂs Learning Style Using Felder-Silverman Index |
Author Order | 2 of 2 |
Accreditation | 2 |
Abstract | This paper focuses on detecting student learning styles using the Felder-Silverman Index Learning Style (FSLM). Providing Adaptivity based on learning styles can support students and make the learning process easier for them. However, the student learning styles need to be identified and understood to provide the appropriate adaptability. In this case, we use a questionnaire instrument to detect studentâÂÂs learning styles. This paper analyses of students from Professional Education Teacher (PPG) at the Ministry of Research, Technology, and Higher Education (Kemenristek DIKTI).ààThe results show that 1998 students who filled out the questionnaire obtained the following conclusions for each zone with a balanced learning style about 29.9% for dimension processing, 34.78% for input dimension, and 36.98% for understanding dimension. However, most students have a moderate sensing learning style with 31.13% for each zone for the dimension of perception. This research contributes to some areas, such as providing FSLSM learning style with a large dataset and capturing students' learning styles based on four dimensions. |
Publisher Name | Department of Informatics Engineering, Universitas Muhammadiyah Purwokerto |
Publish Date | 2021-11-30 |
Publish Year | 2021 |
Doi | DOI: 10.30595/juita.v9i2.10191 |
Citation | |
Source | JUITA : Jurnal Informatika |
Source Issue | JUITA Vol. 9 No. 2, November 2021 |
Source Page | 181 - 190 |
Url | https://jurnalnasional.ump.ac.id/index.php/JUITA/article/view/10191/4370 |
Author | Dr LASMEDI AFUAN, S.T, M.Cs |
File | 2355533.pdf |
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