Identifying Social Media Conversation Topics Regarding Electric Vehicles in Indonesia Using Latent Dirichlet Allocation

M. T. Anwar, Mailia Putri Utami, Laksmi Ambarwati, Abdul Wahid Arohman
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引用次数: 2

Abstract

Understanding public perceptions regarding EVs is important so that strategic decisions could be made in developing the EV ecosystem in a country. However, given the large and various aspects of EV adoption, it is very hard to decide which aspects are more important and need to be addressed first. The identification of topics can be facilitated by using topic modeling applied to social media data. This research aims to identify social media conversation topics regarding electric vehicles in Indonesia using Latent Dirichlet Allocation. Tweet search resulted in 11565 tweets which 1746 of them are unique tweets were collected between February 13 to March 9, 2022, using the tweepy library in Python. The LDA modeling resulted in 5 major topics regarding EVs in Indonesia i.e: the ecosystem development (42.9%), the positive impact on the environment (24.1%), the development of the domestic electric vehicle industry (17.5%), the convenience / supporting facilities for electric vehicles (9.7%), and the investment in battery-based electric vehicle production (5.7%). The anecdotal findings and the limitation of this study are discussed.
使用潜在狄利克雷分配识别印度尼西亚关于电动汽车的社交媒体话题
了解公众对电动汽车的看法非常重要,这样才能在一个国家发展电动汽车生态系统时做出战略决策。然而,考虑到电动汽车采用的广泛和各种方面,很难决定哪些方面更重要,需要首先解决。通过将主题建模应用于社交媒体数据,可以方便地识别主题。本研究旨在利用潜在狄利克雷分配来确定印度尼西亚关于电动汽车的社交媒体对话主题。使用Python的tweepy库,在2022年2月13日至3月9日期间收集了11565条推文,其中1746条是唯一推文。LDA模型得出了印度尼西亚电动汽车的5个主要主题,即生态系统发展(42.9%)、对环境的积极影响(24.1%)、国内电动汽车产业的发展(17.5%)、电动汽车的便利/配套设施(9.7%)和电池电动汽车生产的投资(5.7%)。讨论了轶事调查结果和本研究的局限性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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