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Extracting and Normalizing Entity-Actions from Users' Comments

机译:从用户评论中提取和规范实体动作

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With the growing popularity of opinion-rich resources on the Web, new opportunities and challenges arise and aid people in actively using such information to understand the opinions of others. Opinion mining process currently focuses on extracting the sentiments of the users on products, social, political and economical issues. In many instances, users not only express their sentiments but also contribute their ideas, requests and suggestions through comments. Such comments are useful for domain experts and are referred to as actionable content. Extracting actionable knowledge from online social media has attracted a growing interest from both academia and the industry. We define a new problem in this line which is extracting entity-actionable knowledge from the users' comments. The problem aims at extracting and normalizing the entity-action pairs. We propose a principled approach to solve this problem and detect exactly matched entities with 75.1% F-score and exactly matched actions with 76.43% F-score. We could achieve an average precision of 81.15% for entity-action normalization.
机译:随着具有丰富意见的资源在Web上的日益普及,出现了新的机遇和挑战,并帮助人们积极地使用此类信息来理解他人的意见。意见挖掘过程当前着重于提取用户对产品,社会,政治和经济问题的看法。在许多情况下,用户不仅可以表达自己的观点,还可以通过评论发表自己的想法,要求和建议。这样的评论对领域专家很有用,被称为可操作的内容。从在线社交媒体中提取可操作的知识引起了学术界和整个行业的日益增长的兴趣。我们在这一行中定义了一个新问题,该问题是从用户的评论中提取实体可操作的知识。该问题旨在提取和规范实体-动作对。我们提出了一种有原则的方法来解决此问题,并检测具有75.1%F分数的完全匹配的实体和具有76.43%F分数的完全匹配的动作。实体动作归一化的平均精度可以达到81.15%。

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