Reinforcing Recommendation Using Implicit Negative Feedback
نویسندگان
چکیده
Recommender systems have explored a range of implicit feedback approaches to capture users’ current interests and preferences without intervention of users’ work. However, the problem of implicit feedback elicit negative feedback, because users mainly target information they want. Therefore, there have been few studies to test how effective negative implicit feedback is to personalize information. In this paper, we assess whether implicit negative feedback can be used to improve recommendation quality.
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