Information market based recommender systems fusion

HetRec '11 Pub Date : 2011-10-27 DOI:10.1145/2039320.2039321
E. Bothos, K. Christidis, Dimitris Apostolou, G. Mentzas
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引用次数: 9

Abstract

Recommender Systems have emerged as a way to tackle the overload of information reflected in the increasing volume of information artefacts in the web and elsewhere. Recommender Systems analyse existing information on the user activities in order to estimate future preferences. However, in real life situations, different types of information can be found and their interpretation can vary as well. Each recommender system implements a different approach for utilizing the known information and predicting the user preferences. A problem is that of blending the recommendations in an adaptive, intuitive way while performing better than base recommenders. In this work we propose an approach based on information markets for the fusion of recommender systems. Information Markets have unique characteristics that make them suitable building blocks for ensemble recommenders. We evaluate our approach with the Movielens and Netflix datasets and discuss the results of our experiments.
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基于信息市场的推荐系统融合
推荐系统作为一种解决信息过载的方法而出现,这反映在网络和其他地方的信息人工制品的数量不断增加。推荐系统分析用户活动的现有信息,以估计未来的偏好。然而,在现实生活中,可以找到不同类型的信息,它们的解释也会有所不同。每个推荐系统实现了利用已知信息和预测用户偏好的不同方法。一个问题是以一种自适应的、直观的方式混合推荐,同时表现得比基本推荐更好。在这项工作中,我们提出了一种基于信息市场的推荐系统融合方法。信息市场具有独特的特征,使其适合于集成推荐。我们用Movielens和Netflix的数据集评估了我们的方法,并讨论了我们的实验结果。
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Experience Discovery: hybrid recommendation of student activities using social network data A kernel-based approach to exploiting interaction-networks in heterogeneous information sources for improved recommender systems Expert recommendation based on social drivers, social network analysis, and semantic data representation Matrix co-factorization for recommendation with rich side information and implicit feedback Information market based recommender systems fusion
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