This paper studies Aspect-based Opinion Summarization (AOS) of reviews on particular products. In practice, an AOS system needs to address two core subtasks, aspect extraction and sentiment classification. Most existing approaches to aspect extraction, using linguistic analysis or topic modeling, are general across different products but not precise enough or suitable for particular products. Instead we take a less general but more precise scheme, which directly maps each review sentence into pre-defined aspects. To tackle aspect mapping and sentiment classification, we propose two Convolutional Neural Network (CNN) based methods, cascaded CNN and multitask CNN. Cascaded CNN contains two levels of convolutional networks. Multiple CNNs at level 1 deal with aspect mapping task, and a single CNN at level 2 deals with sentiment classification. Multitask CNN also contains multiple aspect CNNs and a sentiment CNN, but different networks share the same word embeddings. Experimental results show that both cascaded and multitask CNNs with pre-trained word embedding outperform linear classifiers, and multitask CNN generally performs better than cascaded CNN.
D DhanushAbhinav Kumar ThakurNarasimha Prasad Diwakar
Wendi ZhouAmeer Saadat-YazdiNadin Kökciyan
Peng WuXiaotong LiSi ShenDaqing He
Yong ZhangJoo Er MengMahardhika Pratama