[1]张晓琳,付英姿,褚培肖. 杰卡德相似系数在推荐系统中的应用[J].计算机技术与发展,2015,25(04):158-161.
 ZHANG Xiao-lin,FU Ying-zi,CHU Pei-xiao. Application of Jaccard Similarity Coefficient in Recommender System[J].,2015,25(04):158-161.
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 杰卡德相似系数在推荐系统中的应用()
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《计算机技术与发展》[ISSN:1006-6977/CN:61-1281/TN]

卷:
25
期数:
2015年04期
页码:
158-161
栏目:
应用开发研究
出版日期:
2015-04-10

文章信息/Info

Title:
 Application of Jaccard Similarity Coefficient in Recommender System
文章编号:
1673-629X(2015)04-0158-04
作者:
 张晓琳付英姿褚培肖
 昆明理工大学 理学院
Author(s):
 ZHANG Xiao-linFU Ying-ziCHU Pei-xiao
关键词:
 推荐系统协同过滤杰卡德相似系数余弦相似性
Keywords:
 recommender systemscollaborative filteringJaccard similarity coefficientcosine similarity
分类号:
TP302.1
文献标志码:
A
摘要:
 项目相似性度量是协同过滤系统的核心。相关研究中,基于物品协同过滤系统的相似性度量方法普遍使用余弦相似性。然而,在许多实际应用中,评价数据稀疏度过高,物品之间通过余弦相似度计算会产生误导性结果。文中将杰卡德相似性度量应用到基于物品的协同过滤系统中,并建立起相应的评价分析方法。与传统相似性度量方法相比,杰卡德方法完善了余弦相似性只考虑用户评分而忽略了其他信息量的弊端,特别适合于文中所应用的稀疏度过高的数据。最后通过实例说明上述方法的有效性。
Abstract:
 Item similarity metric is the core of collaborative filtering system. In related research,cosine similarity has been regularly used in item-based collaborative filtering system. However,in many practical cases,cosine similarity leads to misleading results due to high sparsity. Jaccard similarity is used in item-based collaborative filtering in this article to build the corresponding evaluation and analysis methods. Compared with traditional similarity metric,Jaccard method improves the drawbacks of cosine similarity,which only takes user rating in consideration and ignores other information,and is suitable for considering the high sparse data. In the end,an example is used to prove the effectiveness of Jaccard similarity.

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更新日期/Last Update: 2015-06-05