A collaborative filtering similarity measure based on singularities

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摘要

Recommender systems play an important role in reducing the negative impact of information overload on those websites where users have the possibility of voting for their preferences on items. The most normal technique for dealing with the recommendation mechanism is to use collaborative filtering, in which it is essential to discover the most similar users to whom you desire to make recommendations. The hypothesis of this paper is that the results obtained by applying traditional similarities measures can be improved by taking contextual information, drawn from the entire body of users, and using it to calculate the singularity which exists, for each item, in the votes cast by each pair of users that you wish to compare. As such, the greater the measure of singularity result between the votes cast by two given users, the greater the impact this will have on the similarity. The results, tested on the Movielens, Netflix and FilmAffinity databases, corroborate the excellent behaviour of the singularity measure proposed.

论文关键词:RS,recommender systems,CF,collaborative filtering,SM,singularity measure,Collaborative filtering,Recommender systems,Singularity,Similarity measures,Neighborhoods

论文评审过程:Received 21 July 2010, Revised 23 December 2010, Accepted 24 March 2011, Available online 6 May 2011.

论文官网地址:https://doi.org/10.1016/j.ipm.2011.03.007