ILCR: Item-based Latent Factors for Sparse Collaborative Retrieval


Abstract in English

Interactions between search and recommendation have recently attracted significant attention, and several studies have shown that many potential applications involve with a joint problem of producing recommendations to users with respect to a given query, termed $Collaborative$ $Retrieval$ (CR). Successful algorithms designed for CR should be potentially flexible at dealing with the sparsity challenges since the setup of collaborative retrieval associates with a given $query$ $times$ $user$ $times$ $item$ tensor instead of traditional $user$ $times$ $item$ matrix. Recently, several works are proposed to study CR task from users perspective. In this paper, we aim to sufficiently explore the sophisticated relationship of each $query$ $times$ $user$ $times$ $item$ triple from items perspective. By integrating item-based collaborative information for this joint task, we present an alternative factorized model that could better evaluate the ranks of those items with sparse information for the given query-user pair. In addition, we suggest to employ a recently proposed scalable ranking learning algorithm, namely BPR, to optimize the state-of-the-art approach, $Latent$ $Collaborative$ $Retrieval$ model, instead of the original learning algorithm. The experimental results on two real-world datasets, (i.e. emph{Last.fm}, emph{Yelp}), demonstrate the efficiency and effectiveness of our proposed approach.

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