Emotion detection based on column comments in material of online learning using artificial intelligence

Many universities use online learning as media learning that each material of media which includes videos, textual content, or audio may be given remarks from college students. The lecture desires to recognize approximately the feelings of college students which include happy, disappointed, or unhap...

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Bibliographic Details
Main Authors: Dwi Wahyono, Irawan, Saryono, Djoko, Putranto, Hari, Asfani, Khoirudin, Ar Rosyid, Harits, Sunarti, Sunarti, Mohamad, Mohd. Murtadha, Mohamad Said, Mohd. Nihra Haruzuan, Horng, Gwo Jiun, Shih, Jia Shing
Format: Article
Language:English
Published: Kassel University Press GmbH 2022
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Online Access:http://eprints.utm.my/id/eprint/98469/1/MohdNihraHaruzuan2022_EmotionDetectionbasedonColumnComments.pdf
http://eprints.utm.my/id/eprint/98469/
http://dx.doi.org/10.3991/IJIM.V16I03.28963
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Summary:Many universities use online learning as media learning that each material of media which includes videos, textual content, or audio may be given remarks from college students. The lecture desires to recognize approximately the feelings of college students which include happy, disappointed, or unhappy when they accessed the media and instructors get an assessment of pleasant from their media. This study constructed a utility cellular for the detection of emotion from column remarks in the media online. The mobile application makes use of synthetic intelligence to type textual content from remarks and to decide the emotion of college students. The mobile application on a cellular device. The set of rules with inside the utility is k-Nearest Neighbour for the textual content mining feature in this study. The information of trying out these studies is commenting on YouTube channels and online studying which include SIPEJAR. The result of trying it out is that the common accuracy is 0,697, the value of recall is 0.5595, and the common precision is 0, 4421 and the accuracy for the utility of this mobile app is 70% for detection emotion-primarily based totally on a column of remark in the media online.