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Consistence beats causality in recommender systems

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arxiv 1501.03577 v1 pith:UNZ3F5DH submitted 2015-01-15 cs.IR physics.data-an

Consistence beats causality in recommender systems

classification cs.IR physics.data-an
keywords textitcausalityalgorithmsinterestsitemspreferencesrecommendationrecommender
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The explosive growth of information challenges people's capability in finding out items fitting to their own interests. Recommender systems provide an efficient solution by automatically push possibly relevant items to users according to their past preferences. Recommendation algorithms usually embody the causality from what having been collected to what should be recommended. In this article, we argue that in many cases, a user's interests are stable, and thus the previous and future preferences are highly consistent. The temporal order of collections then does not necessarily imply a causality relationship. We further propose a consistence-based algorithm that outperforms the state-of-the-art recommendation algorithms in disparate real data sets, including \textit{Netflix}, \textit{MovieLens}, \textit{Amazon} and \textit{Rate Your Music}.

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