Imr: Interactive Music Recommendation via Active Interactive Genetic Algorithm
نویسندگان
چکیده
The success of a music recommendation (MR) system heavily relies on its ability to identify user needs. Existing approaches, including collaborative filtering and contentbased methods, overlook the fact that user needs is inherently subjective and largely time-variant. In this work, we propose an interactive MR system (iMR) to tackle these issues. A user is asked to provide his/her preference for a number of songs, and then the feedback is exploited to learn the user needs. This way, theMR system is optimized for the user on the fly. To relieve user fatigue, the active interactive genetic algorithm is utilized in the learning process of user preference. In addition, to increase the hit rate, the songs awaiting for user evaluation are selected by the k-means algorithm. Experimental result demonstrates the efficacy and efficiency of the proposed system.
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تاریخ انتشار 2009