Analisis Kinerja Support Vector Machine dalam Mengidentifikasi Komentar Perundungan pada Jejaring Sosial

Autor: Wanayumini Wanayumini, Zakarias Situmorang, Ade Clinton Sitepu
Rok vydání: 2021
Předmět:
Zdroj: JURNAL MEDIA INFORMATIKA BUDIDARMA. 5:475
ISSN: 2548-8368
2614-5278
DOI: 10.30865/mib.v5i2.2923
Popis: Cyberbullying is the same as bullying but it is done through media technology. Bullying has often occurred along with the development of social media technology in society. Some technique are needed to filter out bully comments because it will indirectly affect the psychological condition of the reader, morover it is aimed at the person concerned. By using data mining techniques, the system is expected to be able to classify information circulating in the community. This research uses the Support Vector Machine (SVM) classification because the algorithm is good at performing the classification process. Research using about 1000 dataset comments. Data are grouped manually first into the labels "bully" and "not bully" then the data divide into training data and test data. To test the system capability, data is analyzed using confusion matrix. The results showed that the SVM Algorithm was able to classify with an level of accuracy 87.75%, 89% precision and 91% Recal. The SVM algorithm is able to formulate training data with level of accuracy 98.3%
Databáze: OpenAIRE