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Main Authors: Amin, Adi Danish Bin Muhammad, Bhuiyan, Mohaiminul Islam, Kamarudin, Nur Shazwani, Toh, Zulfahmi, Nafis, Nur Syafiqah
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.06708
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author Amin, Adi Danish Bin Muhammad
Bhuiyan, Mohaiminul Islam
Kamarudin, Nur Shazwani
Toh, Zulfahmi
Nafis, Nur Syafiqah
author_facet Amin, Adi Danish Bin Muhammad
Bhuiyan, Mohaiminul Islam
Kamarudin, Nur Shazwani
Toh, Zulfahmi
Nafis, Nur Syafiqah
contents The rapid evolution of the gaming industry, driven by technological advancements and a burgeoning community, necessitates a deeper understanding of user sentiments, especially as expressed on popular social media platforms like YouTube. This study presents a sentiment analysis on video games based on YouTube comments, aiming to understand user sentiments within the gaming community. Utilizing YouTube API, comments related to various video games were collected and analyzed using the TextBlob sentiment analysis tool. The pre-processed data underwent classification using machine learning algorithms, including Naïve Bayes, Logistic Regression, and Support Vector Machine (SVM). Among these, SVM demonstrated superior performance, achieving the highest classification accuracy across different datasets. The analysis spanned multiple popular gaming videos, revealing trends and insights into user preferences and critiques. The findings underscore the importance of advanced sentiment analysis in capturing the nuanced emotions expressed in user comments, providing valuable feedback for game developers to enhance game design and user experience. Future research will focus on integrating more sophisticated natural language processing techniques and exploring additional data sources to further refine sentiment analysis in the gaming domain.
format Preprint
id arxiv_https___arxiv_org_abs_2511_06708
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Sentiment Analysis On YouTube Comments Using Machine Learning Techniques Based On Video Games Content
Amin, Adi Danish Bin Muhammad
Bhuiyan, Mohaiminul Islam
Kamarudin, Nur Shazwani
Toh, Zulfahmi
Nafis, Nur Syafiqah
Computation and Language
The rapid evolution of the gaming industry, driven by technological advancements and a burgeoning community, necessitates a deeper understanding of user sentiments, especially as expressed on popular social media platforms like YouTube. This study presents a sentiment analysis on video games based on YouTube comments, aiming to understand user sentiments within the gaming community. Utilizing YouTube API, comments related to various video games were collected and analyzed using the TextBlob sentiment analysis tool. The pre-processed data underwent classification using machine learning algorithms, including Naïve Bayes, Logistic Regression, and Support Vector Machine (SVM). Among these, SVM demonstrated superior performance, achieving the highest classification accuracy across different datasets. The analysis spanned multiple popular gaming videos, revealing trends and insights into user preferences and critiques. The findings underscore the importance of advanced sentiment analysis in capturing the nuanced emotions expressed in user comments, providing valuable feedback for game developers to enhance game design and user experience. Future research will focus on integrating more sophisticated natural language processing techniques and exploring additional data sources to further refine sentiment analysis in the gaming domain.
title Sentiment Analysis On YouTube Comments Using Machine Learning Techniques Based On Video Games Content
topic Computation and Language
url https://arxiv.org/abs/2511.06708