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综合用户和项目预测的协同过滤模型
引用本文:杨兴耀,于炯,吐尔根·依布拉音,廖彬.综合用户和项目预测的协同过滤模型[J].计算机应用,2013,33(12):3354-3358.
作者姓名:杨兴耀  于炯  吐尔根·依布拉音  廖彬
作者单位:1. 新疆大学 信息科学与工程学院,乌鲁木齐 830046;2. 新疆大学 软件学院,乌鲁木齐 830008
基金项目:国家自然科学基金资助项目;新疆大学优秀博士创新项目基金资助项目;新疆维吾尔自治区自然科学基金资助项目
摘    要:针对基于用户和基于项目的协同过滤模型存在推荐质量不高等问题,提出一种综合用户和项目预测的协同过滤模型。该模型同时考虑用户和项目两方面,首先对性能优秀的相似性模型进行自适应的优化;然后根据相似性值分别选取相似用户和相似项目为目标对象构造近邻集合,并利用预测函数得到基于用户和基于项目的预测结果;最后通过自适应平衡因子的协调处理获得最终预测结果。比较实验在不同的评估标准下进行,结果表明,与目前典型的模型如RSCF、HCFR和UNCF相比,新提出的协同过滤模型不仅在项目预测准确性方面拥有出色的表现,而且在推荐准确性和全面性方面同样表现优秀。

关 键 词:推荐系统  协同过滤  近邻集合  相似性模型  平均绝对偏差  
收稿时间:2013-07-10

Collaborative filtering model combining users' and items' predictions
YANG Xingyao YU Jiong TURGUN Ibrahim LIAO Bin.Collaborative filtering model combining users' and items' predictions[J].journal of Computer Applications,2013,33(12):3354-3358.
Authors:YANG Xingyao YU Jiong TURGUN Ibrahim LIAO Bin
Affiliation:1. School of Information Science and Engineering, Xinjiang University, Urumqi Xinjiang 830046, China2. School of Software, Xinjiang University, Urumqi Xinjiang 830008, China
Abstract:Concerning the poor quality of recommendations of traditional user-based and item-based collaborative filtering models, a new collaborative filtering model combining users and items predictions was proposed. Firstly, it considered both users and items, and optimized the similarity model with excellent performance dynamically. Secondly, it constructed neighbor sets for the target objects by selecting some similar users and items according to the similarity values, and then obtained the user-based and item-based prediction results respectively based on some prediction functions. Finally, it gained final predictions by using the adaptive balance factor to coordinate both of the prediction results. Comparative experiments were carried out under different evaluation criteria, and the results show that, compared with some typical collaborative filtering models such as RSCF, HCFR and UNCF, the proposed model not only has better performance in prediction accuracy of items, but also does well in the precision and recall of recommendations.
Keywords:recommender system                                                                                                                          collaborative filtering                                                                                                                          neighbor set                                                                                                                          similarity model                                                                                                                          Mean Absolute Error (MAE)
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