Are Ratings Always Reliable? Discover Users' True Feelings with Textual Reviews

In e-commerce systems, users’ ratings play an important role in many scenarios such as reputation and trust mechanisms and recommender systems. A general assumption in these techniques is that users’ ratings represent their true feelings. Although it has long been adopted in previous work, this assumption is not necessarily true.

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