Propagation on Multi-relational Graphs for Node Regression
Abstract
Recent years have witnessed a rise in real-world data captured with rich structural information that can be conveniently depicted by multi-relational graphs. While inference of continuous node features across a simple graph is rather under-studied by the current relational learning research, we go one step further and focus on node regression problem on multi-relational graphs. We take inspiration from the well-known label propagation algorithm aiming at completing categorical features across a simple graph and propose a novel propagation framework for completing missing continuous features at the nodes of a multi-relational and directed graph. Our multi-relational propagation algorithm is composed of iterative neighborhood aggregations which originate from a relational local generative model. Our findings show the benefit of exploiting the multi-relational structure of the data in several node regression scenarios in different settings.
Cite
@article{arxiv.2110.08185,
title = {Propagation on Multi-relational Graphs for Node Regression},
author = {Eda Bayram},
journal= {arXiv preprint arXiv:2110.08185},
year = {2021}
}
Comments
Accepted to IJCLR 2021 Workshop: Statistical Relational AI (StarAI)