A Markov Random Field model for Hypergraph-based Machine Learning
Bohan Tang, Keyue Jiang, Laura Toni, Siheng Chen, Xiaowen Dong

TL;DR
This paper introduces a hypergraph Markov random field model that captures joint distributions of node and hyperedge features, improving structure inference and node classification in hypergraph machine learning tasks.
Contribution
It develops a novel hypergraph Markov random field model and two frameworks, HGSI and Hypergraph-MLP, for structure inference and node classification, respectively.
Findings
HGSI outperforms existing structure inference methods.
Hypergraph-MLP achieves superior accuracy in node classification.
Frameworks demonstrate robustness and efficiency in experiments.
Abstract
Understanding the data-generating process is essential for building machine learning models that generalise well while ensuring robustness and interpretability. This paper addresses the fundamental challenge of modelling the data generation processes on hypergraphs and explores how such models can inform the design of machine learning algorithms for hypergraph data. The key to our approach is the development of a hypergraph Markov random field that models the joint distribution of the node features and hyperedge features in a hypergraph through a multivariate Gaussian distribution whose covariance matrix is uniquely determined by the hypergraph structure. The proposed data-generating process provides a valuable inductive bias for various hypergraph machine learning tasks, thus enhancing the algorithm design. In this paper, we focus on two representative downstream tasks: structure…
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Taxonomy
TopicsMachine Learning and Data Classification · Advanced Graph Neural Networks · Bayesian Modeling and Causal Inference
Methodsfail
