• Corpus ID: 5724860

Mining Opinion Features in Customer Reviews

  title={Mining Opinion Features in Customer Reviews},
  author={Minqing Hu and B. Liu},
  booktitle={AAAI Conference on Artificial Intelligence},
  • Minqing HuB. Liu
  • Published in
    AAAI Conference on Artificial…
    25 July 2004
  • Computer Science, Business
It is a common practice that merchants selling products on the Web ask their customers to review the products and associated services. As e-commerce is becoming more and more popular, the number of customer reviews that a product receives grows rapidly. For a popular product, the number of reviews can be in hundreds. This makes it difficult for a potential customer to read them in order to make a decision on whether to buy the product. In this project, we aim to summarize all the customer… 

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