一种从在线评论中共同提取意见目标和意见词的新方法

Saru, M. Bhusry, Ketki
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引用次数: 1

摘要

随着电子商务的迅速发展,越来越多的产品在网上销售,所以很多人也在网上购买产品。为了提高顾客的满意度和购物体验,让顾客对他们购买的产品进行评论或发表意见已经成为网上商家的一种普遍做法。本工作还对现有的共同提取算法和模型进行了研究,并利用这些算法和模型来集中意见目标和意见词。其次,采用基于图的协同排序算法提取意见目标和意见词。此外,我们将使用TWTM(主题词触发模型)计算意见关系图中的词之间的关系,例如主题关系。TWTM对主题特定词触发器进行建模,具有更强的判别性。因此,TWTM能够更精确地弥合文档内容和关键短语之间的词汇差距。
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A new approach towards co-extracting opinion-targets and opinion words from online reviews
With the speedy expansion of e-commerce, more and more products are sold on the Web, and so many people are also purchasing products online. In order to enhance customer satisfaction and shopping experience, it has become a common practice for online merchants to enable their customers to review or to express opinions on the products that they have purchased. This work also displays an investigation of existing co-extracting algorithm and models are utilized to concentrate opinion targets and opinion words. Next, a graph-based co-ranking algorithm is used to extract opinion targets and opinion words. Also we are going to calculate relations between words, such as topical relations, in Opinion Relation Graph using TWTM (Topical Word Trigger Model). TWTM models topic specific word triggers, which are more discriminative. Hence TWTM is able to bridge the vocabulary gap between document content and key phrases more precisely.
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