Solving Sparse Rating Problem Using Fine Grained Approach

Journal Title: International Journal on Computer Science and Engineering - Year 2012, Vol 4, Issue 6

Abstract

Recommender System is a system that automatically recommends all similar kind of items that are of user interest. In design of the recommender systems rating is the crucial issue. Till today many algorithms have been proposed for efficient recommendation but they still requires further improvements to make it more effective. In this paper we address the limitations of recommendation methods and propose a possible model to address the First rater problem(Sparse Rating) of the collaborative based approach to improve recommendation capabilities for a broader range of applications.

Authors and Affiliations

Nibha Sharma , Mudasir Mohd , Anjali Mohapatra

Keywords

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  • EP ID EP161144
  • DOI -
  • Views 117
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How To Cite

Nibha Sharma, Mudasir Mohd, Anjali Mohapatra (2012). Solving Sparse Rating Problem Using Fine Grained Approach. International Journal on Computer Science and Engineering, 4(6), 1231-1235. https://europub.co.uk/articles/-A-161144