Abstract

Learning Management System (LMS) is well de-signed and operated by an exceptional teaching team, but LMS does not consider the needs and characteristics of each student’s learning style. The LMS has not yet provided a feature to detect student diversity, but LMS has a track record of student learning activities known as log files. This study proposes a detection model of student’s learning styles by utilizing information on log file data consisting of four processes. The first process is pre-processing to get 29 features that are used as the input in the clustering process. The second process is clustering using a modified K-Means algorithm to get a label from each test data set before the classification process is carried out. The third process is detecting learning styles from each data set using the Naive Bayesian classification algorithm, and finally, the analysis of the performance of the proposed model. The test results using the validity value of the Davies-Bouldin Index (DBI) matrix indicate that the modified K-Means algorithm achieved 2.54 DBI, higher than that of original K-Means with 2.39 DBI. Besides having high validity, it also makes the algorithm more stable than the original K-Means algorithm because the labels of each dataset do not change. The improved performance of the clustering algorithm also increases the values of precision, recall, and accuracy of the automatic learning style detection model proposed in this study. The average precision value rises from 65.42% to 71.09%, the value of recall increases from 72.09% to 80.23%, and the value of accuracy increases from 67.06% to 71.60%.

Highlights

  • The rapidly developing information and communication technology currently offer excellent potential to overcome the problem of equitable access to quality learning in Higher Education through the Learning Management System (LMS)

  • This research succeeded in building an automatic learning style detection model using a combination of K-Means algorithm modification with Naive Bayesian

  • Based on the test results, there is a modification of the K-Means algorithm, which is used to form labels on the learning force detection models proposed in this study can improve the performance of grouping the data sets when compared to the original K-Means algorithm

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Summary

INTRODUCTION

The rapidly developing information and communication technology currently offer excellent potential to overcome the problem of equitable access to quality learning in Higher Education through the Learning Management System (LMS). The proposed improvement of the FSLSM learning style detection model is carried out by combining the modification of the K-Means algorithm with the Naive Bayesian classification algorithm. The detection process of the proposed learning style model consists of four methods, namely pre-processing, which aims to translate the data log file to several characteristics such as skills, level of knowledge, preferences, and learning styles that are considered to affect the learning process of students directly This process produces in 29 features used for the grouping process of the dataset derived from the participants of the Education for Professional Teachers held by the Ministry of Research and Technology for teachers of English subject with 500 data.

RELATED WORKS
PROPOSED METHOD
Observation and Pre-processing
Classification Process Using the Naive Bayesian Algorithm
Model Testing
ANALYSIS AND DISCUSSION
Results of Clustering Using Modified K-Means Algorithm
Classification Results using the Naive Bayesian Algorithm
Findings
CONCLUSION
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