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RECSYS
2009
ACM

Improving rating estimation in recommender systems using aggregation- and variance-based hierarchical models

13 years 11 months ago
Improving rating estimation in recommender systems using aggregation- and variance-based hierarchical models
Previous work on using external aggregate rating information showed that this information can be incorporated in several different types of recommender systems and improves their performance. In this paper, we propose a more general class of methods that combine external aggregate information with individual ratings in a novel way. Unlike the previously proposed methods, one of the defining features of this approach is that it takes into the consideration not only the aggregate average ratings but also the variance of the aggregate distribution of ratings. The methods proposed in this paper estimate unknown ratings by finding an optimal linear combination of individual-level and aggregate-level rating estimators in a form of a hierarchical regression (HR) model that is grounded in the theory of statistics and machine learning. The proposed HR model is general enough so that the standard individual-level recommender systems and naive aggregate methods constitute special cases of thi...
Akhmed Umyarov, Alexander Tuzhilin
Added 28 May 2010
Updated 28 May 2010
Type Conference
Year 2009
Where RECSYS
Authors Akhmed Umyarov, Alexander Tuzhilin
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