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Personalized Service System Based on Hybrid Filtering for Digital Library 被引量:2

Personalized Service System Based on Hybrid Filtering for Digital Library
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摘要 Personalized service systems are an effective way to help users obtain recommendations for unseen items, within the enormous volume of information available based on their preferences. The most commonly used personalized service system methods are collaborative filtering, content-based filtering, and hybrid filtering. Unfortunately, each method has its drawbacks. This paper proposes a new method which unified partition-based collaborative filtering and meta-information filtering. In partition-based collaborative filtering the user-item rating matrix can be partitioned into low-dimensional dense matrices using a matrix clustering algorithm. Recommendations are generated based on these low-dimensional matrices. Additionally, the very low ratings problem can be solved using meta-information filtering. The unified method is applied to a digital resource management system. The experimental results show the high efficiency and good performance of the new approach. Personalized service systems are an effective way to help users obtain recommendations for unseen items, within the enormous volume of information available based on their preferences. The most commonly used personalized service system methods are collaborative filtering, content-based filtering, and hybrid filtering. Unfortunately, each method has its drawbacks. This paper proposes a new method which unified partition-based collaborative filtering and meta-information filtering. In partition-based collaborative filtering the user-item rating matrix can be partitioned into low-dimensional dense matrices using a matrix clustering algorithm. Recommendations are generated based on these low-dimensional matrices. Additionally, the very low ratings problem can be solved using meta-information filtering. The unified method is applied to a digital resource management system. The experimental results show the high efficiency and good performance of the new approach.
出处 《Tsinghua Science and Technology》 SCIE EI CAS 2007年第1期1-8,共8页 清华大学学报(自然科学版(英文版)
基金 the National Natural Science Foundation of China (No. 60473078)
关键词 personalized service system content-based filtering collaborative filtering user preferences model category-based collaborative filtering meta-information filtering personalized service system content-based filtering collaborative filtering user preferences model category-based collaborative filtering meta-information filtering
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