A new collaborative filtering metric that improves the behavior of recommender systems

作者:

Highlights:

摘要

Recommender systems are typically provided as Web 2.0 services and are part of the range of applications that give support to large-scale social networks, enabling on-line recommendations to be made based on the use of networked databases. The operating core of recommender systems is based on the collaborative filtering stage, which, in current user to user recommender processes, usually uses the Pearson correlation metric. In this paper, we present a new metric which combines the numerical information of the votes with independent information from those values, based on the proportions of the common and uncommon votes between each pair of users. Likewise, we define the reasoning and experiments on which the design of the metric is based and the restriction of being applied to recommender systems where the possible range of votes is not greater than 5. In order to demonstrate the superior nature of the proposed metric, we provide the comparative results of a set of experiments based on the MovieLens, FilmAffinity and NetFlix databases. In addition to the traditional levels of accuracy, results are also provided on the metrics’ coverage, the percentage of hits obtained and the precision/recall.

论文关键词:RS,recommender systems,CF,collaborative filtering,Collaborative filtering,Recommender systems,Metric,Jaccard,Mean squared differences,Similarity

论文评审过程:Received 21 July 2009, Revised 18 March 2010, Accepted 19 March 2010, Available online 23 March 2010.

论文官网地址:https://doi.org/10.1016/j.knosys.2010.03.009