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Propagating Users' Similarity towards Improving Recommender Systems

Published: 11 August 2014 Publication History

Abstract

In this paper we examine an advanced collaborative filtering method that uses similarity transitivity concepts. By propagating "similarity" between users, in a similar way as with "trust", we can significantly expand the space of potential recommenders and system's coverage, improving also the recommendations' accuracy. While "trust" information might be missing or be misleading and incorrect, "similarity" between two users can be directly calculated using the information from users' item ratings. A recent study observed a strong correlation between trust and preference similarity in online rating systems, therefore it makes sense that transitivity concepts can also be applied to "similarity", much as they are applied to "trust". In contrast to a vast amount of work that seeks to exploit existed social information, like trust, from social networks to improve the recommendation process, we propose the other way round towards the same goal: use similarity transitivity concepts exploiting the rating history of the recommender system's users to lead to the formation of new relationships and even social communities that were not previously existed. We propose a novel similarity propagation scheme to confront the data sparsity problem in recommender systems and evaluate our method over two datasets with different characteristics, exhibiting a much higher recommendation coverage and better accuracy than classical collaborative filtering methods even under very sparse data conditions.

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cover image ACM Conferences
WI-IAT '14: Proceedings of the 2014 IEEE/WIC/ACM International Joint Conferences on Web Intelligence (WI) and Intelligent Agent Technologies (IAT) - Volume 01
August 2014
472 pages
ISBN:9781479941438

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IEEE Computer Society

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Published: 11 August 2014

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Author Tags

  1. cold-start problem
  2. collaborative filtering
  3. data sparsity
  4. recommender systems
  5. similarity transitivity

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