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Indonesian Lexicon-Based Sentiment Analysis of Online Religious Lectures Review

机译:基于印度尼西亚词典的在线宗教讲座的情绪分析审查

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Online videos platforms such as YouTube is the most popular social media platform in terms of user numbers in Indonesia. YouTube is also one of the most popular online platforms for accessing religious lectures. Users can provide feedback on the videos through comments, likes, and shares. On the other hand, sentiment analysis in the Indonesian language is getting popular, but few have tapped the vast unstructured data source on YouTube. Comments and reviews from viewers are valuable feedbacks for improvements. The review on YouTube is an essential resource to be analyzed by a preacher. However, manual analysis of YouTube reviews is complicated due to a large amount of review data. Therefore, this study aims to analyze sentiment on YouTube video reviews. In this paper, we employed the Lexicon and Latent Dirichlet Allocation (LDA) to analyze a total of 2575 review data. In this case study, we mined YouTube user’s review to understand the netizen's opinion on a famous Islamic Preacher in South East Asia, namely Ustadz Abdul Somad (UAS). We employed the Google Apps Script (GAS) with Javascript coding language to crawl YouTube review data. Based on the results, the lexicon method successfully analyzed sentiments with an accuracy of 70%. Furthermore, 98% of YouTube users gave positive reviews on the UAS videos lecture. This study is a stepping stone for more complex sentiment analysis regarding text pre-processing and algorithm robustness.
机译:YouTube等在线视频平台是印度尼西亚的用户号码中最受欢迎的社交媒体平台。 YouTube也是访问宗教讲座的最受欢迎的在线平台之一。用户可以通过评论,喜欢和共享提供有关视频的反馈。另一方面,印度尼西亚语言的情感分析正在流行,但很少有人在YouTube上删除了巨大的非结构化数据源。观众的评论和评论是改进的宝贵反馈。 YouTube的审查是传教士分析的基本资源。但是,由于大量审查数据,对YouTube评论的手动分析很复杂。因此,本研究旨在分析youtube视频评论的情绪。在本文中,我们雇用了词典和潜在的Dirichlet分配(LDA)来分析总共2575个审查数据。在这种情况下,我们挖掘了YouTube用户的审查,以了解Netizen对东南亚着名的伊斯兰传教士的看法,即Ustadz Abdul Somad(UAS)。我们使用JavaScript编码语言雇用Google Apps脚本(GAIL),以抓取YouTube评论数据。基于结果,词典方法以70%的准确性成功分析了情绪。此外,98%的YouTube用户对UAS视频讲座提供了积极的评价。本研究是一款关于文本预处理和算法鲁棒性更复杂的情感分析的梯度石头。

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