A Novel Cross-Domain Recommendation with Evolution Learning

Author:

Chen Yi-Cheng1ORCID,Lee Wang-Chien2ORCID

Affiliation:

1. National Central University

2. The Pennsylvania State University

Abstract

In this “info-plosion” era, recommendation systems (or recommenders) play a significant role in finding interesting items in the surge of on-line digital activities and e-commerce. Several techniques have been widely applied for recommendation systems, but the cold start and sparsity problems remain a major challenge. The cold start problem occurs when generating recommendations for new users and items without sufficient information. Sparsity refers to the problem of having a large amount of users and items but with few transactions or interactions. In this paper, a novel cross-domain recommendation model, Cross-Domain Evolution Learning Recommendation (abbreviated as CD-ELR), is developed to communicate the information from different domains in order to tackle the cold start and sparsity issues by integrating matrix factorization and recurrent neural network. We introduce an evolutionary concept to describe the preference variation of users over time. Furthermore, several optimization methods are developed for combining the domain features for precision recommendation. Experimental results show that CD-ELR outperforms existing state-of-the-art recommendation baselines. Finally, we conduct experiments on several real-world datasets to demonstrate the practicability of the proposed CD-ELR.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference60 articles.

1. M. Abdi , G. Okeyo and R. Mwangi , “ Matrix Factorization Techniques for Context-Aware Collaborative Filtering Recommender Systems: A Survey ,” Computer and Information Science , vol. 11 , no. 2, 2018. M. Abdi, G. Okeyo and R. Mwangi, “Matrix Factorization Techniques for Context-Aware Collaborative Filtering Recommender Systems: A Survey,” Computer and Information Science, vol. 11, no. 2, 2018.

2. Cross-Domain Mediation in Collaborative Filtering

3. S. Berkovsky , T. Kuflik , F. Ricci , “ Distributed Collaborative Filtering with Domain Specialization ,” Proceeding of the 1st ACM Conference on Recommender Systems , pp. 33 - 40 , 2007 . S. Berkovsky, T. Kuflik, F. Ricci, “Distributed Collaborative Filtering with Domain Specialization,” Proceeding of the 1st ACM Conference on Recommender Systems, pp. 33-40, 2007.

4. S. Bin and G. Sun , “ Matrix Factorization Recommendation Algorithm Based on Multiple Social Relationships ,” Mathematical Problems in Engineering , vol. 2021 , 2021 . S. Bin and G. Sun, “Matrix Factorization Recommendation Algorithm Based on Multiple Social Relationships,” Mathematical Problems in Engineering, vol. 2021, 2021.

5. DCDIR: A Deep Cross-Domain Recommendation System for Cold Start Users in Insurance Domain

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