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Comparing consumer-produced product reviews across multiple websites with sentiment classification

机译:比较多个网站上消费者生产的产品评论和情感分类

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Online consumer reviews have been extensively studied. However, existing literature analyzing online consumer review data mostly relies on a single data source, resulting in potentially biased analytics conclusions. Many websites encourage consumers to post reviews of their purchased products, so that new consumers can evaluate these reviews for the same product across different websites to help them make purchasing decisions. Confusions often arise in this process, because there often exist substantial discrepancies in customer reviews across different retailers on the same product. Clarifying such confusions can help consumers reduce concerns to make up their mind for their purchases, therefore benefiting both consumers and retailers. Through text analytics and sentiment analysis, we comparatively examine the underlying patterns of online consumer reviews of three large retailers including Sears, Home Depot, and Best Buy for a same product. Afterward, we combine online consumer reviews from these large retailers and conduct an overall text analytics and sentiment analysis. The overall results are further compared with the results from individual retailers. The findings show that the sentiment of the online consumer reviews could vary substantially so relying on a single data source to make purchase decision is not a wise idea. Based on the results, we further devise a framework to comparatively examine and integrate multiple data sources for social media analytics of online consumer reviews. This study offers important managerial implications and identifies several new research directions for social media analytics.
机译:在线消费者评论已被广泛研究。但是,现有的分析在线消费者评论数据的文献大多依赖于单个数据源,从而导致潜在的有偏见的分析结论。许多网站鼓励消费者发布对其购买产品的评论,以便新消费者可以在不同网站上针对同一产品评估这些评论,以帮助他们做出购买决定。在此过程中经常会产生混乱,因为在同一产品的不同零售商之间,客户评论中经常存在实质性差异。弄清这种混乱可以帮助消费者减少顾虑,从而决定是否购买商品,从而使消费者和零售商都受益。通过文本分析和情绪分析,我们比较了针对同一产品的三大零售商(包括Sears,Home Depot和Best Buy)的在线消费者评论的基本模式。之后,我们结合了来自这些大型零售商的在线消费者评论,并进行了整体文本分析和情感分析。总体结果将与各个零售商的结果进行比较。调查结果表明,在线消费者评论的情绪可能会有很大差异,因此仅依靠单个数据源做出购买决定并不是一个明智的主意。根据结果​​,我们进一步设计了一个框架,以比较检查和集成多个数据源,以进行在线消费者评论的社交媒体分析。这项研究提供了重要的管理意义,并确定了社交媒体分析的几个新研究方向。

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