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Social analytics: Learning fuzzy product ontologies for aspect-oriented sentiment analysis

机译:社交分析:学习模糊产品本体以进行面向方面的情感分析

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In the era of Web 2.0, there has been an explosive growth of consumer-contributed comments at social media and electronic commerce Web sites. Applying state-of-the-art social analytics methodology to analyze the sentiments embedded in these consumer comments facilitates both firms' product design strategies and individual consumers' comparison shopping. However, existing social analytics methods often adopt coarse-grained and context-free sentiment analysis approaches. Consequently, these methods may not be effective enough to support firms and consumers' demands of fine-grained extraction of market intelligence from social media. Guided by the design science research methodology, the main contribution of our research is the design of a novel social analytics methodology that can leverage the sheer volume of consumer reviews archived at social media sites to perform a fine-grained extraction of market intelligence. More specifically, the proposed social analytics methodology is underpinned by a novel semi-supervised fuzzy product ontology mining algorithm. Evaluated based on real-world social media data, our prototype system shows remarkable performance improvement over a baseline ontology learning system and a context-free sentiment analysis system The managerial implication of our research is that firms can apply the proposed social analytics methodology to tap into the collective social intelligence on the Web, and hence improve their product design and marketing strategies.
机译:在Web 2.0时代,社交媒体和电子商务网站上的消费者贡献评论的爆炸式增长。应用最新的社会分析方法来分析这些消费者评论中嵌入的情绪,有助于公司的产品设计策略和个人消费者的比较购物。但是,现有的社会分析方法通常采用粗粒度和无上下文的情感分析方法。因此,这些方法可能不足以支持公司和消费者从社交媒体细粒度提取市场情报的需求。在设计科学研究方法的指导下,我们的研究的主要贡献是设计了一种新颖的社交分析方法,该方法可以利用在社交媒体站点上存档的大量消费者评论来进行市场情报的细粒度提取。更具体地说,所提出的社交分析方法以新颖的半监督模糊产品本体挖掘算法为基础。根据现实世界的社交媒体数据进行评估,我们的原型系统在基准本体学习系统和无上下文情感分析系统上表现出显着的性能提升。我们研究的管理意义在于,企业可以将建议的社交分析方法应用于网络上的集体社会智能,从而改善他们的产品设计和营销策略。

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