Transforming Graph Representations for Statistical Relational Learning
Ryan A. Rossi, Luke K. McDowell, David W. Aha, Jennifer Neville

TL;DR
This paper explores how transforming graph representations can enhance statistical relational learning by systematically categorizing and comparing various transformation approaches for nodes, links, and features.
Contribution
It introduces a comprehensive taxonomy for relational data transformations, unifying link and node transformation tasks to improve SRL algorithm performance.
Findings
Proposed a taxonomy for data representation transformations.
Compared different approaches for link and node transformations.
Identified challenges and future directions in relational data transformation.
Abstract
Relational data representations have become an increasingly important topic due to the recent proliferation of network datasets (e.g., social, biological, information networks) and a corresponding increase in the application of statistical relational learning (SRL) algorithms to these domains. In this article, we examine a range of representation issues for graph-based relational data. Since the choice of relational data representation for the nodes, links, and features can dramatically affect the capabilities of SRL algorithms, we survey approaches and opportunities for relational representation transformation designed to improve the performance of these algorithms. This leads us to introduce an intuitive taxonomy for data representation transformations in relational domains that incorporates link transformation and node transformation as symmetric representation tasks. In particular,…
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Taxonomy
TopicsAdvanced Graph Neural Networks · Bioinformatics and Genomic Networks · Bayesian Modeling and Causal Inference
