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首页> 外文期刊>Procedia Computer Science >Extracting Product Features for Opinion Mining Using Public Conversations in Twitter
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Extracting Product Features for Opinion Mining Using Public Conversations in Twitter

机译:在Twitter中使用公共对话提取产品功能以进行意见挖掘

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The conversational element of Twitter has recently become of particular interest to the marketing community. However, most studies on mining product features through Twitter, have so far employed simple individual tweets rather than considering the whole conversations. In this paper, we empirically evaluate whether employing user interactions in public conversations can improve the product feature extraction from tweets. We propose a conversation-based method which considers a conversation as a reply tree and employs reply links, to effectively extract the product features involved in the messages. We also develop a conversation filtering process which combines scores measured from different aspects including content relevance and social aspects. We conducted our experiments using a manually annotated Twitter corpus involving smartphones and other electronics products. The experimental results show the effectiveness of our proposed method.
机译:Twitter的对话元素最近已引起市场营销界的特别关注。但是,到目前为止,有关通过Twitter挖掘产品功能的大多数研究都使用简单的个人推文,而不是考虑整个对话。在本文中,我们根据经验评估在公共对话中采用用户交互是否可以改善从推文中提取产品特征的情况。我们提出了一种基于会话的方法,该方法将会话视为答复树并采用答复链接,以有效地提取消息中涉及的产品功能。我们还开发了一个对话过滤过程,该过程结合了从不同方面(包括内容相关性和社交方面)测得的分数。我们使用涉及智能手机和其他电子产品的手动注释Twitter语料库进行了实验。实验结果表明了该方法的有效性。

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