Title :
Aspect-level opinion mining of online customer reviews
Author :
Xu Xueke ; Cheng Xueqi ; Tan Songbo ; Liu Yue ; Shen Huawei
Author_Institution :
Key Lab. of Web Data Sci. & Technol., Inst. of Comput. Technol., Beijing, China
Abstract :
This paper focuses on how to improve aspect-level opinion mining for online customer reviews. We first propose a novel generative topic model, the Joint Aspect/Sentiment (JAS) model, to jointly extract aspects and aspect-dependent sentiment lexicons from online customer reviews. An aspect-dependent sentiment lexicon refers to the aspect-specific opinion words along with their aspect-aware sentiment polarities with respect to a specific aspect. We then apply the extracted aspect-dependent sentiment lexicons to a series of aspect-level opinion mining tasks, including implicit aspect identification, aspect-based extractive opinion summarization, and aspect-level sentiment classification. Experimental results demonstrate the effectiveness of the JAS model in learning aspect- dependent sentiment lexicons and the practical values of the extracted lexicons when applied to these practical tasks.
Keywords :
customer satisfaction; data mining; pattern classification; text analysis; JAS model; aspect identification; aspect-aware sentiment polarities; aspect-based extractive opinion summarization; aspect-dependent sentiment lexicons; aspect-level opinion mining; aspect-level sentiment classification; aspect-specific opinion words; joint aspect-sentiment model; novel generative topic model; online customer reviews; Adaptation models; Computational modeling; Context awareness; Data mining; Market research; Numerical models; Performance evaluation; Web 2.0; Joint Aspect/Sentiment model; aspect-dependent sentiment lexicon; aspectlevel opinion mining; online customer reviews;
Journal_Title :
Communications, China
DOI :
10.1109/CC.2013.6488828