4.5 Article

Block-Aware Item Similarity Models for Top-N Recommendation

Journal

ACM TRANSACTIONS ON INFORMATION SYSTEMS
Volume 38, Issue 4, Pages -

Publisher

ASSOC COMPUTING MACHINERY
DOI: 10.1145/3411754

Keywords

Item collaborative filtering; item similarity model; top-N recommendation

Funding

  1. NSFC [61806035, U1936217, 61872446, 71690233]
  2. PNSF of Hunan [2019JJ20024]
  3. Key Research and Technology Development Projects of Anhui Province [202004a05020043]
  4. Innovation Center for Artificial Intelligence (ICAI)

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Top-N recommendations have been studied extensively. Promising results have been achieved by recent item-based collaborative filtering (ICF) methods. The key to ICF lies in the estimation of item similarities. Observing the block-diagonal structure of the item similarities in practice, we propose a block-diagonal regularization (BDR) over item similarities for ICF. The intuitions behind BDR are as follows: (1) with BDR, item clustering is embedded into the learning of ICF methods; (2) BDR induces sparsity of item similarities, which guarantees recommendation efficiency; and (3) BDR captures in-block transitivity to overcome rating sparsity. By regularizing the item similarity matrix of item similarity models with BDR, we obtain a block-aware item similarity model. Our experimental evaluations on a large number of datasets show that the block-diagonal structure is crucial to the performance of top-N recommendation.

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