Paper ID: 2111.15466

Citation network applications in a scientific co-authorship recommender system

Vladislav Tishin, Artyom Sosedka, Peter Ibragimov, Vadim Porvatov

The problem of co-authors selection in the area of scientific collaborations might be a daunting one. In this paper, we propose a new pipeline that effectively utilizes citation data in the link prediction task on the co-authorship network. In particular, we explore the capabilities of a recommender system based on data aggregation strategies on different graphs. Since graph neural networks proved their efficiency on a wide range of tasks related to recommendation systems, we leverage them as a relevant method for the forecasting of potential collaborations in the scientific community.

Submitted: Nov 22, 2021