会议专题

An Improved Similarity Algorithm for Personalized Recommendation

Recommendation systems represent personalized services that aim at predicting users interest on information items available in the application domain. The computation of the neighbor set of users or resources is the most important step of the personalized recommendation system, and the key to this step is the calculation of similarity. This paper analyzes three main similarity algorithms and finds deficiencies in these algorithms, which affect the quality of the recommendation system. Then the paper proposes a new similarity algorithm Simi-Huang, which effectively overcomes the above-mentioned drawbacks. Experiments show that Simi-Huang algorithm is better than the three main similarity algorithms in the computation of accuracy, especially when the data is sparse. Under different training models, Simi-Huang is best in accuracy of all the algorithms; the smaller the training model is, the more accurate the algorithm is.

Similarity Personalized Recommendation Prediction algorithm

Huangfu Dapeng Lin Qianhui Zhou Jingmin

State Key Laboratory of Software Development Environment, Beihang University, 100191, Beijing, China

国际会议

2009 International Forum on Computer Science-Technology and Applications(2009年国际计算机科学技术与应用论坛 IFCSTA 2009)

重庆

英文

54-57

2009-12-25(万方平台首次上网日期,不代表论文的发表时间)