本文已被:浏览 1794次 下载 4040次
Received:December 12, 2013 Revised:January 17, 2014
Received:December 12, 2013 Revised:January 17, 2014
中文摘要: 在豆瓣网络数据上对传统的协同过滤推荐算法进行改进,分别考虑最近邻和有向相似度方向的作用,对图书、电影和音乐收藏列表进行个性化推荐.推荐的结果在准确度、多样性和新奇性三种被广泛使用在衡量推荐算法效果的指标上进行比较和分析.结果表明,相比传统协同过滤推荐算法,两种改进算法均能够保证多样性和新奇性,同时最近邻算法可有效降低算法复杂度,而有向相似度算法则具有更高的推荐准确度.
Abstract:This paper improved the collaborative filtering recommendation algorithm by considering the nearest neighbor and directed similarity in Douban network data. Then, the improved algorithms were used to recommend books, movies and music for Douban users. The recommended results are carefully compared and analyzed in terms of three well-know indicators including accuracy, diversity and novelty. It is shown that the nearest neighbor algorithm has much lower computational complexity and the directed similarity algorithm obtains higher accuracy, while all these three algorithms have similar diversity and novelty of the recommended results, by comparing with the traditional collaborative filtering recommendation algorithm.
keywords: complex networks recommendation algorithm collaborative filtering nearest neighbor directed similarity
文章编号: 中图分类号: 文献标志码:
基金项目:国家自然科学青年基金(61004097);国家自然科学基金(61273232)
引用文本:
马晓迪,宣琦,张哲,傅晨波,董辉.协同过滤推荐算法在豆瓣网络数据上的研究.计算机系统应用,2014,23(8):18-24
MA Xiao-Di,XUAN Qi,ZHANG Zhe,FU Chen-Bo,DONG Hui.Research of Collaborative Filtering Recommendation Algorithm on Douban Network Data.COMPUTER SYSTEMS APPLICATIONS,2014,23(8):18-24
马晓迪,宣琦,张哲,傅晨波,董辉.协同过滤推荐算法在豆瓣网络数据上的研究.计算机系统应用,2014,23(8):18-24
MA Xiao-Di,XUAN Qi,ZHANG Zhe,FU Chen-Bo,DONG Hui.Research of Collaborative Filtering Recommendation Algorithm on Douban Network Data.COMPUTER SYSTEMS APPLICATIONS,2014,23(8):18-24