Identify Reviews of Pedulilindungi Applications using Topic Modeling with Latent Dirichlet Allocation Method

Layli Hardiyanti, Dina Anggraini, Ana Kurniawati
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Abstract

The emergence of Covid-19 in December 2019 has disrupted life worldwide, including Indonesia. The government has made various efforts to control the pandemic, one of which is the development of an application called PeduliLindungi. This app aims to be a reliable tool for the government and the entire community during the pandemic. As a new regulation, the use of PeduliLindungi has prompted numerous reviews assessing its quality and performance. With the app's emergence and growth, various topics have emerged and become trending among the public. These topics were identified through user reviews of the PeduliLindungi app, using the Latent Dirichlet Allocation (LDA) algorithm. The data, consisting of 15,522 reviews, was collected from the Google Play Store and underwent pre-processing, including dictionary and corpus creation, determining the number of topics, and modeling with LDA. The resulting topic modeling process generated the ten most prominent topics. The outcomes were visualized using word clouds and topic distribution graphs, representing the most discussed aspects of the PeduliLindungi app among users. These topics are considered diverse since each issue has no relation or similarity to one another.
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基于潜在狄利克雷分配方法的主题建模方法在peddulilindungi应用中的应用综述
2019年12月新冠肺炎的出现扰乱了包括印度尼西亚在内的世界各地的生活。政府为控制疫情做出了各种努力,其中之一是开发一款名为PeduliLindungi的应用程序。该应用程序旨在成为疫情期间政府和整个社会的可靠工具。作为一种新制剂,PeduliLindungi的使用引发了许多评价其质量和性能的评论。随着这款应用的出现和发展,各种话题层出不穷,并成为公众关注的热点。这些主题是通过PeduliLindungi应用程序的用户评论确定的,使用潜在狄利克雷分配(LDA)算法。数据由15522条评论组成,从Google Play Store收集,并进行了预处理,包括字典和语料库创建,确定主题数量以及使用LDA建模。最终的主题建模过程生成了十个最突出的主题。结果使用词云和主题分布图进行可视化,代表了PeduliLindungi应用程序在用户中讨论最多的方面。这些主题被认为是多样化的,因为每个问题彼此之间没有关系或相似之处。
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审稿时长
12 weeks
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