Mining the peanut gallery: opinion extraction and semantic classification of product reviews

@inproceedings{Dave2003MiningTP,
  title={Mining the peanut gallery: opinion extraction and semantic classification of product reviews},
  author={Kushal Dave and Steve Lawrence and David M. Pennock},
  booktitle={WWW '03},
  year={2003}
}
The web contains a wealth of product reviews, but sifting through them is a daunting task. Ideally, an opinion mining tool would process a set of search results for a given item, generating a list of product attributes (quality, features, etc.) and aggregating opinions about each of them (poor, mixed, good). We begin by identifying the unique properties of this problem and develop a method for automatically distinguishing between positive and negative reviews. Our classifier draws on… Expand
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