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From Popularity to Personality-A Heuristic Music Recommendation Method for Niche Market

From Popularity to Personality——A Heuristic Music Recommendation Method for Niche Market
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摘要 In most current recommender systems,the goal to accurately predict what people want leads to the tendency to recommend popular items,which is less helpful in revealing user's personality,especially to new users.In this paper,we propose a heuristic music recommendation method for niche market by focusing on how to identify user's personality as soon as possible.Instead of trying to improve algorithm's performance on new users by recommending the most popular items,we work on how to make them "familiar" with the system earlier.The method is more suitable for brand-new users,and gives a hint to solve the cold start problem.In real applications it is better to combine it with a traditional approach. In most current recommender systems,the goal to accurately predict what people want leads to the tendency to recommend popular items,which is less helpful in revealing user's personality,especially to new users.In this paper,we propose a heuristic music recommendation method for niche market by focusing on how to identify user's personality as soon as possible.Instead of trying to improve algorithm's performance on new users by recommending the most popular items,we work on how to make them "familiar" with the system earlier.The method is more suitable for brand-new users,and gives a hint to solve the cold start problem.In real applications it is better to combine it with a traditional approach.
机构地区 Web Sciences Center
出处 《Journal of Computer Science & Technology》 SCIE EI CSCD 2011年第5期816-822,共7页 计算机科学技术学报(英文版)
基金 supported by the National Natural Science Foundation of China under Grant Nos.60973120,60903073,61003231,61103109,and11105024
关键词 music recommendation system niche market item popularity user personality music recommendation system niche market item popularity user personality
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  • 1Brin S and Page L 1998 Comput. Netw. ISDN Syst. 30 107.
  • 2Resnick P and Varian H R 1997 Commun. ACM 40 56.
  • 3Kazienko Pet al 2007 Inf. Sci. 177 2269.
  • 4Pazzani M J and Billsus D 2007 LNCS 4321 325.
  • 5Tso K and Schmidt-Thieme L 2005 Proc. 29th Annual Conference of the German Classification Society (Magdeburg, Germany 9-11 March 2005).
  • 6Hotho Aet al. 2006 LNCS 4011 411.
  • 7Cattuto C et al 2008 PNAS 104 1461.
  • 8Golder S A and Huberman B A 2006 J. Inf. Sci. 32 198.
  • 9Mishne G 2006 Proc. 15^th WWW (Edinburgh, Scotland 23-26 May 2006) ) p 953.
  • 10Sigurbjornsson B and Zwol R V 2008 Proc. 17^th WWW (Beijing, China 21-25 April 2008) p 327.

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