Weight Term Document in Clustering Algorithm for Classification a Final Project in Online Learning - Repositori Universitas Negeri Malang

Weight Term Document in Clustering Algorithm for Classification a Final Project in Online Learning

Wahyono, Irawan Dwi and Asfani, Khoirudin and Mohamad, Mohd Murtadha and Saryono, Djoko and Putranto, Hari and Haruzuan, Mohd Nihra and Said, Bin Muhammad (2021) Weight Term Document in Clustering Algorithm for Classification a Final Project in Online Learning. 2021 International Research Symposium On Advanced Engineering And Vocational â€¦, 2021.

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Abstract

The problem in all online learning is that all assessment such as final project is uploaded in it and lecture must evaluate all final project in a specific course that has different topics and subjects so it makes difficult for the lecture. This research built an application that makes a classification of final project documents from the student based on the same subjects and topics. The application takes data from database online learning in a specific course that the database of the final project has a different scope and broad topic. Classification is carried out based on the similarity of topics from the final project document for certain subjects. The document is in the form of text, so a text-mining algorithm is needed to determine some of the topics contained in the final project document. Determination of the final project document according to a particular topic requires a similarity algorithm. This research takes the final project file from Google Drive and the online learning database and implements it in a mobile application. The average result of testing is that the accuracy is 72.49%.

Item Type: Article
Subjects: L Education > L Education (General)
Divisions: Fakultas Sastra (FS) > Laporan Karya Ilmiah FS
Depositing User: Users 2 not found.
Date Deposited: 29 Apr 2021 06
Last Modified: 23 Mar 2022 04:09
URI: http://repository.um.ac.id/id/eprint/196731

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