Source
AIST
DATE OF PUBLICATION
11/02/2022
Authors
Ilya Makarov
Olga Gerasimova
Anna Lapidus
Share
Research Papers Recommendation
Abstract
The work is devoted to academic papers recommendation task considered as link prediction on a static citation network. We compare several graph embeddings, text-based and fusion models in the link prediction problem on academic papers citation dataset. We showed that fusion models of graph and text information outperform other approaches based on graph or text information alone. We prove this via an extensive set of experiments with different train/test splits that our fusion models are robust and retain superior performance even with a reduced train set.
Similar publications
You can ask us a question or suggest a joint project in the field of AI
partner@airi.net
For scientific cooperation and
partnership
partnership
pr@airi.net
For journalists and media