A collaborative filtering approach to mitigate the new user cold start problem

作者:

Highlights:

摘要

The new user cold start issue represents a serious problem in recommender systems as it can lead to the loss of new users who decide to stop using the system due to the lack of accuracy in the recommendations received in that first stage in which they have not yet cast a significant number of votes with which to feed the recommender system’s collaborative filtering core. For this reason it is particularly important to design new similarity metrics which provide greater precision in the results offered to users who have cast few votes. This paper presents a new similarity measure perfected using optimization based on neural learning, which exceeds the best results obtained with current metrics. The metric has been tested on the Netflix and Movielens databases, obtaining important improvements in the measures of accuracy, precision and recall when applied to new user cold start situations. The paper includes the mathematical formalization describing how to obtain the main quality measures of a recommender system using leave-one-out cross validation.

论文关键词:Cold start,Recommender systems,Collaborative filtering,Neural learning,Similarity measures,Leave-one-out-cross validation

论文评审过程:Received 23 November 2010, Revised 29 July 2011, Accepted 29 July 2011, Available online 30 August 2011.

论文官网地址:https://doi.org/10.1016/j.knosys.2011.07.021