• Title of article

    Utilizing various sparsity measures for enhancing accuracy of collaborative recommender systems based on local and global similarities

  • Author/Authors

    Anand، نويسنده , , Deepa and Bharadwaj، نويسنده , , Kamal K.، نويسنده ,

  • Issue Information
    روزنامه با شماره پیاپی سال 2011
  • Pages
    9
  • From page
    5101
  • To page
    5109
  • Abstract
    Collaborative filtering is a popular recommendation technique, which suggests items to users by exploiting past user-item interactions involving affinities between pairs of users or items. In spite of their huge success they suffer from a range of problems, the most fundamental being that of data sparsity. When the rating matrix is sparse, local similarity measures yield a poor neighborhood set thus affecting the recommendation quality. In such cases global similarity measures can be used to enrich the neighborhood set by considering transitive relationships among users even in the absence of any common experiences. In this work we propose a recommender system framework utilizing both local and global similarities, taking into account not only the overall sparsity in the rating data, but also sparsity at the user-item level. Several schemes are proposed, based on various sparsity measures pertaining to the active user, for the estimation of the parameter α, that allows the variation of the importance given to the global user similarity with regards to local user similarity. Furthermore, we propose an automatic scheme for weighting the various sparsity measures, through evolutionary approach, to obtain a unified measure of sparsity (UMS). In order to take maximum possible advantage of the various sparsity measures relating to an active user, a scheme based on the UMS is suggested for estimating α. Experimental results demonstrate that the proposed estimates of α, markedly, outperform the schemes for which α is kept constant across all predictions (fixed-α schemes), on accuracy of predicted ratings.
  • Keywords
    Recommender Systems , Similarity measures , Sparsity measures , collaborative filtering
  • Journal title
    Expert Systems with Applications
  • Serial Year
    2011
  • Journal title
    Expert Systems with Applications
  • Record number

    2349179