articleDec 1, 2011Closed access

SLIM: Sparse Linear Methods for Top-N Recommender Systems

University of Minnesota

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Abstract

This paper focuses on developing effective and efficient algorithms for top-N recommender systems. A novel Sparse Linear Method (SLIM) is proposed, which generates top-N recommendations by aggregating from user purchase/rating profiles. A sparse aggregation coefficient matrix W is learned from SLIM by solving an ℓ 1 -norm and ℓ 2 -norm regularized optimization problem. W is demonstrated to produce high quality recommendations and its sparsity allows SLIM to generate recommendations very fast. A comprehensive set of experiments is conducted by comparing the SLIM method and other state-of-the-art top-N recommendation methods. The experiments show that SLIM achieves significant improvements both in run time…

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734
total citations
FWCI
27.50
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100%
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23
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Authors

2

Topics & keywords

Keywords
  • Recommender system
  • Computer science
  • Set (abstract data type)
  • Norm (philosophy)
  • Sparse matrix
  • Matrix (chemical analysis)
  • Quality (philosophy)
  • Information retrieval
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