A personalized paper recommendation method considering diverse user preferences

作者:

Highlights:

• A heterogeneous network is built to integrate papers, venues, authors, terms, users and their relations into a unified framework.

• Random walk on meta-path is applied on different meta-paths connecting papers and users in the heterogeneous network to measure the recommendation score of candidate papers to target users.

• Bayesian Personalized Ranking is employed as objective function for users' personalized weights learning on different meta-paths.

• A personalized paper recommendation method is proposed by combining the recommendation score on different meta-paths with personalized weights learned from users' history preferences.

• Experiment results showed the proposed method was more effective than other baseline methods.

摘要

Prior studies of paper recommendation methods that consider historical user preferences rarely adequately address the complexity of user preferences and interests. We propose a method to recommend personalized papers based on a heterogeneous network that includes papers, venues, authors, terms, and users as well as the relations among these entities. We investigate meta-paths in the network to capture user preferences and apply random walks on these meta-paths to measure recommendation scores of candidate papers to target users. We employ a personalized weight learning process to discover a user's personalized weights on different meta-paths using Bayesian Personalized Ranking as the objective function. A global recommendation score is calculated by combining recommendation scores on different meta-paths with personalized weights. We conducted experiments using two different datasets and the results showed that the proposed method performed better than other baseline methods.

论文关键词:Paper recommendation,Heterogeneous network,Meta-paths,Personalized recommendation

论文评审过程:Received 24 August 2020, Revised 13 March 2021, Accepted 14 March 2021, Available online 16 March 2021, Version of Record 15 May 2021.

论文官网地址:https://doi.org/10.1016/j.dss.2021.113546