Analysis and Implementation Machine Learning for YouTube Data Classification by Comparing the Performance of Classification Algorithms

UNIVERSITAS BINA DARMA, UNIVERSITAS BINA DARMA (2022) Analysis and Implementation Machine Learning for YouTube Data Classification by Comparing the Performance of Classification Algorithms. Analysis and Implementation Machine Learning for YouTube Data Classification by Comparing the Performance of Classification Algorithms.

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Abstract

Every day, people around the world upload 1.2 million videos to YouTube or more than 100 hours per minute, and this number is increasing. The condition of this continuous data will be useless if not utilized again. To dig up information on large-scale data, a technique called data mining can be a solution. One of the techniques in data mining is classification. For most YouTube users, when searching for video titles do not match the desired video category. Therefore, this research was conducted to classify YouTube data based on its search text. This article focuses on comparing three algorithms for the classification of YouTube data into the Kesenian and Sains category. Data collection in this study uses scraping techniques taken from the YouTube website in the form of links, titles, descriptions, and searches. The method used in this research is an experimental method by conducting data collection, data processing, proposed models, testing, and evaluating models. The models applied are Random Forest, SVM, Naive Bayes. The results showed that the accuracy rate of the random forest model was better by 0.004%, with the label encoder not being applied to the target class, and the label encoder had no effect on the accuracy of the classification models. The most appropriate model for YouTube data classification from data taken in this study is Naïve Bayes, with an accuracy rate of 88% and an average precision of 90%.

Item Type: Article
Subjects: H Social Sciences > H Social Sciences (General)
Divisions: Faculty of Law, Arts and Social Sciences > School of Social Sciences
Depositing User: Mr Edi Surya Negara
Date Deposited: 19 Jun 2022 12:40
Last Modified: 19 Jun 2022 12:40
URI: http://eprints.binadarma.ac.id/id/eprint/12674

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