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UM
2009
Springer

History Dependent Recommender Systems Based on Partial Matching

13 years 9 months ago
History Dependent Recommender Systems Based on Partial Matching
Abstract. This paper focuses on the utilization of the history of navigation within recommender systems. It aims at designing a collaborative recommender based on Markov models relying on partial matching in order to ensure high accuracy, coverage, robustness, low complexity while being anytime. Indeed, contrary to state of the art, this model does not simply match the context of the active user to the context of other users but partial matching is performed: the history of navigation is divided into several sub-histories on which matching is performed, allowing the matching constraints to be weakened. The resulting model leads to an improvement in terms of accuracy compared to state of the art models.
Armelle Brun, Geoffray Bonnin, Anne Boyer
Added 27 Jul 2010
Updated 27 Jul 2010
Type Conference
Year 2009
Where UM
Authors Armelle Brun, Geoffray Bonnin, Anne Boyer
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