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Exploring eWOM in online customer reviews: Sentiment analysis at a fine-grained level

机译:探索在线客户评论中的EWOM:精细粒度的情绪分析

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Customer reviews in social media and electronic commerce Web sites contain valuable electronic word-of-mouth (eWOM) information of products, which facilitates firms' business strategy and individual consumers' comparison shopping. Exploring eWOM of products embedded in customer reviews has attracted interest from researchers in various fields. Coarse-grained and context-free sentiment analysis approaches have been used in existing researches, which however often fail to satisfy the firms' demands of fine-grained extraction of market intelligence from social media. In this study, we propose an original method to explore eWOM of products based on sentiment analysis at fine-grained level from a large volume of online customer reviews. We illustrate a feature-based and context-sensitive sentiment analysis mechanism that can leverage the sheer volume of customer reviews in social media sites. A novel semi-supervised fuzzy product ontology mining algorithm is proposed to extract semantic knowledge from online customer reviews with positive or negative labels. Based on real-world online customer review data set, the proposed method shows remarkable performance improvement over baseline methods at exploring eWOM of product a fine-grained level. With the novel eWOM exploring method, firms can improve their product design and marketing strategies, and potential consumers can make better online purchase decisions.
机译:社交媒体和电子商务网站的客户评论包含有价值的电子词汇(EWOM)产品信息,这些信息促进了公司的业务战略和个人消费者的比较购物。探索嵌入客户评论的产品EWOM吸引了各领域的研究人员的兴趣。在现有的研究中使用了粗粒度和无论如何的情绪分析方法,然而通常无法满足公司对社交媒体的细粒度提取市场情报的需求。在这项研究中,我们提出了一种原创的方法,以探讨产品的EWOM基于来自大量的在线客户评论的细粒度分析。我们说明了一个基于特征和上下文敏感的情感分析机制,可以利用社交媒体网站中的顾客评论的庞大数量。提出了一种新型半监督模糊产品本体挖掘算法,以提取利用积极或负标签的在线客户评论中提取语义知识。基于现实世界在线客户审查数据集,该方法在探索产品的EWOM探索细粒度水平时,对基线方法进行了显着的性能改进。通过新颖的EWOM探索方法,公司可以提高其产品设计和营销策略,潜在的消费者可以提高在线购买决策。

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