The Development of Intelligent Web for Rural Social E-Learning

  • Seno Adi Putra Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Timmie Siswandi Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Dessy Yussela Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Rinez Asprinola Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Erin Karina Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Mega Candra Dewi Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
  • Santi Al-arif Laboratory for Enterprise Intelligent System, School of Industrial and System Engineering, Telkom University, Bandung, Jawa Barat 40257, Indonesia
Keywords: Social e-Learning, Intelligent Web, PageRank, Similarity Score, ROCK Algorithm, Naïve Bayes, Decision Tree, Neural Network

Abstract

Social media technology affects the learning paradigm change towards social media-based learning, known as social e-learning. Social e-learning regards a person as a center of learning, dubbed people-centered learning. Here, people are encouraged to interact or communicate with others and produce their learning content. This work attempted to provide a solution model for rural e-learning social learning empowered with intelligent web technology. The proposed social e-learning includes several modules for development, such as personal space, collaboration space, and communication space modules. It also leverages intelligent web technologies currently implemented in today’s social media applications, such as article search, article recommendations, friendship recommendations, and document classification. In the searching module, the PageRank method was used to calculate the relevance score to determine the rating of the documents or articles. The similarity-based element calculation method was utilized to create articles’ suggestions and recommendations. The naïve Bayes algorithm, decision tree, and neural network were compared to find the best solution for article classification in agriculture, fisheries, animal husbandry, and plantations. When comparing these three algorithms, the result showed that the neural network was the most accurate classification, reaching 95.2% accuracy. A clustering algorithm, namely robust clustering using links (ROCK), was utilized for rural friendship recommendation. Thus, these algorithms (the PageRank, the similarity-based element, neural network, and the ROCK) were suitable and recommended for supporting intelligent web paradigms in social e-learning applications.

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Published
2024-08-27
How to Cite
Seno Adi Putra, Timmie Siswandi, Dessy Yussela, Rinez Asprinola, Erin Karina, Mega Candra Dewi, & Santi Al-arif. (2024). The Development of Intelligent Web for Rural Social E-Learning. Jurnal Nasional Teknik Elektro Dan Teknologi Informasi, 13(3), 112-121. https://doi.org/10.22146/jnteti.v13i3.9872
Section
Articles