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Joint multi-grain topic sentiment: modeling semantic aspects for online reviews

机译:多谷物联合主题情感:在线评论的语义方面建模

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摘要

The availability of electronic word-of-mouth, online consumer reviews, is increasing rapidly. Users frequently look for important aspects of a product or service in the reviews. They are typically interested in sentiment-oriented ratable aspects (i.e., semantic aspects). However, extracting semantic aspects across domains is challenging. We propose a domain-independent topic sentiment model called Joint Multi-grain Topic Sentiment (JMTS) to extract semantic aspects. JMTS effectively extracts quality semantic aspects automatically, thereby eliminating the requirement for manual probing. We conduct both qualitative and quantitative comparisons to evaluate JMTS. The experimental results confirm that JMTS generates semantic aspects with correlated top words and outperforms state-of-the-art models in several performance metrics. (C) 2016 Elsevier Inc. All rights reserved.
机译:电子口碑,在线消费者评论的可用性正在迅速增长。用户经常在评论中寻找产品或服务的重要方面。他们通常对面向情感的可评分方面(即语义方面)感兴趣。但是,跨域提取语义方面具有挑战性。我们提出了一个独立于领域的主题情感模型,称为联合多颗粒主题情感(JMTS),以提取语义方面。 JMTS有效地自动提取高质量的语义方面,从而消除了手动探测的需求。我们进行定性和定量比较,以评估JMTS。实验结果证实,JMTS可以生成具有相关关键词的语义方面,并且在多个性能指标方面均优于最新模型。 (C)2016 Elsevier Inc.保留所有权利。

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