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Exploiting Consumer Reviews for Product Feature Ranking 被引量:1

Exploiting Consumer Reviews for Product Feature Ranking
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摘要 Web 2.0 technology leads Web users to publish a large number of consumer reviews about products and services on various websites. Major product features extracted from consumer reviews may let product providers find what features are mostly cared by consumers, and also may help potential consumers to make purchasing decisions. In this work, we propose a linear regression with rules-based approach to ranking product features according to their importance. Empirical experiments show our approach is effective and promising. We also demonstrate two applications using our proposed approach. The first application decomposes overall ratings of products into product feature ratings. And the second application seeks to generate consumer surveys automatically. Web 2.0 technology leads Web users to publish a large number of consumer reviews about products and services on various websites. Major product features extracted from consumer reviews may let product providers find what features are mostly cared by consumers, and also may help potential consumers to make purchasing decisions. In this work, we propose a linear regression with rules-based approach to ranking product features according to their importance. Empirical experiments show our approach is effective and promising. We also demonstrate two applications using our proposed approach. The first application decomposes overall ratings of products into product feature ratings. And the second application seeks to generate consumer surveys automatically.
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2012年第3期635-649,共15页 计算机科学技术学报(英文版)
基金 supported by the National Natural Science Foundation of China under Grant No. 61170263
关键词 product feature ranking product review opinion mining product feature ranking, product review, opinion mining
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参考文献37

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同被引文献17

  • 1Hu Min-qing , Liu Bing. Mining and Summarizing Customer Reviewsj C[/ /Proceedings of the 10th Inter?national Conference on Knowledge Discovery and Data Mining. Seattle. Washington. USA. 2004: 168-177.
  • 2Titov I, Mcdonald R. Modeling Online Reviews with Multi-grain Topic Models[CJ/ /Proceeding of the 17th International Conference on World Wide Web. Beijing. China. 2008: 111-120.
  • 3Jo Y. Oh A. Aspect and Sentiment Unification Model for Online Review Analysis[CJ/ /Proceedings of the fourth ACM international conference on Web search and data mining. Hong Kong. China. 2011: 815-824.
  • 4Thet T T. NaJ. Khoo C S G. Aspect-based sentiment analysis of movie reviews on discussion boards[J].Journal of Information Science ?. 2010. 36 (6): 823- 848.
  • 5Chen Li , Qi Luo-Ie , Wang Feng, Comparison of fea?ture-levellearning methods for mining online consumer reviews[J]. Expert Systems with Applications. 2012. 39(10): 9588-960l.
  • 6Liu Bing. Hu Min-qing , ChengJun-sheng. Opinion observer: analyzing and comparing opinions on the Web[CJ/ /Proceedings of the 14th international confer?ence on World Wide Web. Chiba.Japan. 2005: 342- 35l.
  • 7Ojokoh B A. Kayode O. A Feature-Opinion Extraction Approach to Opinion Mining[J].Journal of Web Engi?neering, 2012, 11(1): 51-63.
  • 8Li r.JiangJ, Wang Y. Generating templates of enti?ty summaries with an entity-aspect model and pattern mining[CJ/ /Proceedings of the 48th Annual Meeting of the Association for Computational Linguistics. Up?psala , Sweden, 2010: 640-649.
  • 9Mukherjee A, Liu B. Aspect Extraction through Semi-Supervised Modeling[CJ/ /Proceedings of 50th Annual Meeting of Association for Computational Linguistics.Jeju , Republic of Korea, 2012: 339-348.
  • 10Qiu Guang, Liu Bing, Bu Iia-jun , et al. Opinion Word Expansion and Target Extraction through Double Propagation[J]. Computational Linguistics, 2011, 37(1): 9-27.

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