Open Access
The Classification of Children Gadget Addiction: The Employment of Learning Vector Quantization 3
Author(s) -
Okfalisa Okfalisa,
Elvia Budianita,
Musa Irfan,
Hidayati Rusnedy,
Saktioto Saktioto
Publication year - 2020
Publication title -
it journal research and development
Language(s) - English
Resource type - Journals
eISSN - 2528-4061
pISSN - 2528-4053
DOI - 10.25299/itjrd.2021.vol5(2).5681
Subject(s) - learning vector quantization , gadget , confusion matrix , machine learning , artificial intelligence , addiction , artificial neural network , psychology , computer science , algorithm , psychiatry
The addiction of children to gadgets has a massive influence on their social growth. Thus, it is essential to note earlier on the addiction of children to such technologies. This study employed the learning vector quantization series 3 to classify the severity of gadget addiction due to the nature of this algorithm as one of the supervised artificial neural network methods. By analyzing the literature and interviewing child psychologists, this study highlighted 34 signs of schizophrenia with 2 level classifications. In order to obtain a sample of training and test data, 135 questionnaires were administered to parents as the target respondents. The learning rate parameter (α) used for classification is 0.1, 0.2, 0.3 with window (Ɛ) is 0.2, 0.3, 0.4, and the epsilon values (m) are 0.1, 0.2, 0.3. The confusion matrix revealed that the highest performance of this classification was found in the value of 0.2 learning rate, 0.01 learning rate reduction, window 0.3, and 80:20 of ratio data simulation. This outcome demonstrated the beneficial consequences of Learning Vector Quantization (LVQ) series 3 in the detection of children's gadget addiction.