利用Naïve贝叶斯算法通过印度尼西亚语YouTube意见探索廖内省景点的游客反馈

R. Kurniawan, I. Iskandar, F. Lestari, Habibi Al Rasyid Harpizon, Ilyas Husti
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引用次数: 1

摘要

YouTube在印尼是一个被广泛使用的平台,拥有93.8%的用户。因此,它为旅游目的地的营销提供了一个宝贵的机会,特别是在廖内省,它的目标是成为印度尼西亚的顶级清真旅游目的地。旅游业是各地区经济增长的重要贡献者,印度尼西亚的每个省每年都竞相推广其旅游景点,以吸引更多的游客。然而,大量的数据可能会挑战对YouTube功能反馈的人工分析,比如喜欢、不喜欢和评论。一篇文献综述表明,使用机器学习的朴素贝叶斯算法对情感分析很有帮助。因此,本研究旨在通过使用Naïve贝叶斯算法分析YouTube评论来分析廖内省旅游目的地的公众情绪。这项研究从YouTube上展示廖内省旅游景点的10个视频中收集了1680条意见。朴素贝叶斯算法将60%的评论分类为正面,32%为中性,8%为负面。实验结果表明,准确率和精密度为73%,召回率为94%,F-1得分为82%。该研究使用词频技术,根据评论中出现频率高的几个词,揭示廖内可能成为一个受欢迎的清真旅游目的地。
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Exploring Tourist Feedback on Riau Attractions Through Indonesian Language YouTube Opinion Using Naïve Bayes Algorithm
YouTube is a widely-used platform in Indonesia, with 93.8% of its users. As such, it presents a valuable opportunity for marketing tourist destinations, particularly in Riau province, which aims to become Indonesia’s top Halal travel destination. Tourism is a vital contributor to the economic growth of regions, and each province in Indonesia competes to promote its tourist attractions to attract more visitors every year. However, the large volume of data can challenge the manual analysis of feedback from YouTube’s features, such as likes, dislikes, and comments. A literature review suggests that the Naive Bayes algorithm, which uses machine learning, is helpful for sentiment analysis. Therefore, this study aims to analyze public sentiment toward tourist destinations in Riau province by analyzing YouTube comments using the Naïve Bayes algorithm. The study used 1680 opinions collected from 10 YouTube videos showcasing tourist destinations in Riau. The Naive Bayes algorithm classified 60% of the comments as positive, 32% as neutral, and 8% as negative. The experimental results indicated an accuracy and precision of 73%, a recall of 94%, and an F-1 Score of 82%. The study used the word frequency technique to reveal that Riau could become a popular halal tourist destination based on several frequently occurring words in the comments.
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