A noise correction-based approach to support a recommender system in a highly sparse rating environment
作者:
Highlights:
• The problems of data sparsity and natural noise in the recommender system are addressed.
• A re-classification method has been proposed to identify and correct noise ratings.
• Bhattacharya coefficient is integrated with the noise identification and correction method.
• The model is validated on two randomly generated sparse and noisy datasets from MovieLens.
• The proposed method improves the precision, recall, F1 measure, MAE and RMSE values.
摘要
Recommender systems support consumers in decision-making for selecting desired products or services from an overloaded search space. However, this decision support system faces difficulties while dealing with sparse and noisy rating data. Therefore, this research re-classifies users and items of a system into three classes, namely strong, average and weak to identify and correct noise ratings. Later, the Bhattacharya coefficient, a well-performing similarity measure for a sparse dataset, is integrated with the proposed re-classification method to predict unrated items from the obtained noise-free sparse dataset and recommend preferred products to consumers. Furthermore, the effectiveness of the proposed model is validated on two sparse and noisy datasets and compared with various published methods in terms of the mean absolute error (MAE), root mean square error (RMSE), F1-measure, precision, and recall values. The obtained results confirm that the proposed model performs better than other published relevant methods.
论文关键词:Decision support systems,Recommender system,Collaborative filtering,Natural noise,Sparsity
论文评审过程:Received 16 August 2018, Revised 5 January 2019, Accepted 5 January 2019, Available online 11 January 2019, Version of Record 15 January 2019.
论文官网地址:https://doi.org/10.1016/j.dss.2019.01.001