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Decoding the sentiment dynamics of online retailing customers: Time series analysis of social media

机译:解码在线零售客户的情感动态:社交媒体的时间序列分析

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The Twittersphere often offers valuable information about current events. However, despite the enormous quantity of tweets regarding online retailing, we know little about customers' perceptions regarding the products and services offered by online retail brands. Therefore, this study focuses on analysing brand-related tweets associated with five leading UK online retailers during the most important sales period of the year, covering Black Friday, Christmas and the New Year's sales events. We explore trends in customer tweets by utilising a combination of data analytics approaches including time series analysis, sentiment analysis and topic modelling to analyse the trends of tweet volume and sentiment and to understand the reasons underlying changes in sentiment. Through the sentiment and time series analyses, we identify several critical time points that lead to significant deviations in sentiment trends. We then use a topic modelling approach to examine the tweets in the period leading up to and following these critical moments to understand what exactly drives these changes in sentiment. The study provides a deeper understanding of online retailing customer behaviour and derives significant managerial insights that are useful for improving online retailing service provision.
机译:Twittersphere经常提供有关当前事件的有价值的信息。但是,尽管有大量关于在线零售业的推文,但我们对客户有关在线零售品牌提供的产品和服务的看法。因此,本研究侧重于分析与五个领先的英国领先在线零售商联系的品牌相关推发,涵盖黑色星期五,圣诞节和新年的销售活动。我们利用数据分析方法的组合探讨客户推文中的趋势,包括时间序列分析,情感分析和主题建模,分析了推文体积和情绪的趋势,并了解情绪变化变化的原因。通过情绪和时间序列分析,我们确定了几个关键时间点,导致情绪趋势的重大偏差。然后,我们使用主题建模方法来检查导致这些关键时刻导致的时段的推文,以了解究竟究竟驱动这些情绪的变化。该研究提供了对在线零售客户行为的更深入了解,并导出了重要的管理见解,可用于改善在线零售服务提供。

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