Density-Aware Hyper-Graph Neural Networks for Graph-based
Semi-supervised Node Classification
- URL: http://arxiv.org/abs/2201.11511v1
- Date: Thu, 27 Jan 2022 13:43:14 GMT
- Title: Density-Aware Hyper-Graph Neural Networks for Graph-based
Semi-supervised Node Classification
- Authors: Jianpeng Liao, Qian Tao, Jun Yan
- Abstract summary: We propose Density-Aware Hyper-Graph Neural Networks (DA-HGNN) to explore the high-order semantic correlation among data.
In our proposed approach, hyper-graph is provided to explore the high-order semantic correlation among data, and a density-aware hyper-graph attention network is presented to explore the high-order connection relationship.
- Score: 3.698434507617248
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Graph-based semi-supervised learning, which can exploit the connectivity
relationship between labeled and unlabeled data, has been shown to outperform
the state-of-the-art in many artificial intelligence applications. One of the
most challenging problems for graph-based semi-supervised node classification
is how to use the implicit information among various data to improve the
performance of classifying. Traditional studies on graph-based semi-supervised
learning have focused on the pairwise connections among data. However, the data
correlation in real applications could be beyond pairwise and more complicated.
The density information has been demonstrated to be an important clue, but it
is rarely explored in depth among existing graph-based semi-supervised node
classification methods. To develop a flexible and effective model for
graph-based semi-supervised node classification, we propose a novel
Density-Aware Hyper-Graph Neural Networks (DA-HGNN). In our proposed approach,
hyper-graph is provided to explore the high-order semantic correlation among
data, and a density-aware hyper-graph attention network is presented to explore
the high-order connection relationship. Extensive experiments are conducted in
various benchmark datasets, and the results demonstrate the effectiveness of
the proposed approach.
Related papers
- Hypergraph-enhanced Dual Semi-supervised Graph Classification [14.339207883093204]
We propose a Hypergraph-Enhanced DuAL framework named HEAL for semi-supervised graph classification.
To better explore the higher-order relationships among nodes, we design a hypergraph structure learning to adaptively learn complex node dependencies.
Based on the learned hypergraph, we introduce a line graph to capture the interaction between hyperedges.
arXiv Detail & Related papers (2024-05-08T02:44:13Z) - DGNN: Decoupled Graph Neural Networks with Structural Consistency
between Attribute and Graph Embedding Representations [62.04558318166396]
Graph neural networks (GNNs) demonstrate a robust capability for representation learning on graphs with complex structures.
A novel GNNs framework, dubbed Decoupled Graph Neural Networks (DGNN), is introduced to obtain a more comprehensive embedding representation of nodes.
Experimental results conducted on several graph benchmark datasets verify DGNN's superiority in node classification task.
arXiv Detail & Related papers (2024-01-28T06:43:13Z) - Learning from Heterogeneity: A Dynamic Learning Framework for Hypergraphs [22.64740740462169]
We propose a hypergraph learning framework named LFH that is capable of dynamic hyperedge construction and attentive embedding update.
To evaluate the effectiveness of our proposed framework, we conduct comprehensive experiments on several popular datasets.
arXiv Detail & Related papers (2023-07-07T06:26:44Z) - DualHGNN: A Dual Hypergraph Neural Network for Semi-Supervised Node
Classification based on Multi-View Learning and Density Awareness [3.698434507617248]
Graph-based semi-supervised node classification has been shown to become a state-of-the-art approach in many applications with high research value and significance.
This paper proposes the Dual Hypergraph Neural Network (DualHGNN), a new dual connection model integrating both hypergraph structure learning and hypergraph representation learning simultaneously in a unified architecture.
arXiv Detail & Related papers (2023-06-07T07:40:04Z) - Optimal Propagation for Graph Neural Networks [51.08426265813481]
We propose a bi-level optimization approach for learning the optimal graph structure.
We also explore a low-rank approximation model for further reducing the time complexity.
arXiv Detail & Related papers (2022-05-06T03:37:00Z) - Heterogeneous Graph Neural Networks using Self-supervised Reciprocally
Contrastive Learning [102.9138736545956]
Heterogeneous graph neural network (HGNN) is a very popular technique for the modeling and analysis of heterogeneous graphs.
We develop for the first time a novel and robust heterogeneous graph contrastive learning approach, namely HGCL, which introduces two views on respective guidance of node attributes and graph topologies.
In this new approach, we adopt distinct but most suitable attribute and topology fusion mechanisms in the two views, which are conducive to mining relevant information in attributes and topologies separately.
arXiv Detail & Related papers (2022-04-30T12:57:02Z) - Data-heterogeneity-aware Mixing for Decentralized Learning [63.83913592085953]
We characterize the dependence of convergence on the relationship between the mixing weights of the graph and the data heterogeneity across nodes.
We propose a metric that quantifies the ability of a graph to mix the current gradients.
Motivated by our analysis, we propose an approach that periodically and efficiently optimize the metric.
arXiv Detail & Related papers (2022-04-13T15:54:35Z) - Learnable Hypergraph Laplacian for Hypergraph Learning [34.28748027233654]
HyperGraph Convolutional Neural Networks (HGCNNs) have demonstrated their potential in modeling high-order relations preserved in graph structured data.
We propose the first learning-based method tailored for constructing adaptive hypergraph structure, termed HypERgrAph Laplacian aDaptor (HERALD)
HERALD adaptively optimize the adjacency relationship between hypernodes and hyperedges in an end-to-end manner and thus the task-aware hypergraph is learned.
arXiv Detail & Related papers (2021-06-12T02:07:07Z) - Learnable Hypergraph Laplacian for Hypergraph Learning [34.28748027233654]
HyperGraph Convolutional Neural Networks (HGCNNs) have demonstrated their potential in modeling high-order relations preserved in graph structured data.
We propose the first learning-based method tailored for constructing adaptive hypergraph structure, termed HypERgrAph Laplacian aDaptor (HERALD)
HERALD adaptively optimize the adjacency relationship between hypernodes and hyperedges in an end-to-end manner and thus the task-aware hypergraph is learned.
arXiv Detail & Related papers (2021-06-10T12:37:55Z) - A Robust and Generalized Framework for Adversarial Graph Embedding [73.37228022428663]
We propose a robust framework for adversarial graph embedding, named AGE.
AGE generates the fake neighbor nodes as the enhanced negative samples from the implicit distribution.
Based on this framework, we propose three models to handle three types of graph data.
arXiv Detail & Related papers (2021-05-22T07:05:48Z) - Tensor Graph Convolutional Networks for Multi-relational and Robust
Learning [74.05478502080658]
This paper introduces a tensor-graph convolutional network (TGCN) for scalable semi-supervised learning (SSL) from data associated with a collection of graphs, that are represented by a tensor.
The proposed architecture achieves markedly improved performance relative to standard GCNs, copes with state-of-the-art adversarial attacks, and leads to remarkable SSL performance over protein-to-protein interaction networks.
arXiv Detail & Related papers (2020-03-15T02:33:21Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.