In this work, we provide a theoretical understanding of the framelet-based graph neural networks through the perspective of energy gradient flow. By viewing the framelet-based models as discretized gradient flows of some energy, we show it can induce both low-frequency and high-frequency-dominated dynamics, via the separate weight matrices for different frequency components. This substantiates its good empirical performance on both homophilic and heterophilic graphs. We then propose a generalized energy via framelet decomposition and show its gradient flow leads to a novel graph neural network, which includes many existing models as special cases. We then explain how the proposed model generally leads to more flexible dynamics, thus potenti...
Structures or graphs are pervasive in our lives. Although deep learning has achieved tremendous succ...
Graph neural networks (GNN) have become the default machine learning model for relational datasets, ...
This paper proposes a new optimization algorithm called Entropy-SGD for training deep neural network...
Gradient flows are differential equations that minimize an energy functional and constitute the main...
Graph convolutions have been a pivotal element in learning graph representations. However, recursive...
This paper introduces a novel Framelet Graph approach based on p-Laplacian GNN. The proposed two mod...
This thesis focuses on spectral-based graph neural networks (GNNs). In Chapter 2, we use multiresolu...
We present Gradient Gating (G2), a novel framework for improving the performance of Graph Neural Net...
We propose structure-preserving neural-network-based numerical schemes to solve both $L^2$-gradient ...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Power flow analysis is an important tool in power engineering for planning and operating power syste...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
We propose Graph-Coupled Oscillator Networks (GraphCON), a novel framework for deep learning on grap...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
Graph neural networks (GNNs) have received great attention due to their success in various graph-rel...
Structures or graphs are pervasive in our lives. Although deep learning has achieved tremendous succ...
Graph neural networks (GNN) have become the default machine learning model for relational datasets, ...
This paper proposes a new optimization algorithm called Entropy-SGD for training deep neural network...
Gradient flows are differential equations that minimize an energy functional and constitute the main...
Graph convolutions have been a pivotal element in learning graph representations. However, recursive...
This paper introduces a novel Framelet Graph approach based on p-Laplacian GNN. The proposed two mod...
This thesis focuses on spectral-based graph neural networks (GNNs). In Chapter 2, we use multiresolu...
We present Gradient Gating (G2), a novel framework for improving the performance of Graph Neural Net...
We propose structure-preserving neural-network-based numerical schemes to solve both $L^2$-gradient ...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Power flow analysis is an important tool in power engineering for planning and operating power syste...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
We propose Graph-Coupled Oscillator Networks (GraphCON), a novel framework for deep learning on grap...
Neural diffusion on graphs is a novel class of graph neural networks that has attracted increasing a...
Graph neural networks (GNNs) have received great attention due to their success in various graph-rel...
Structures or graphs are pervasive in our lives. Although deep learning has achieved tremendous succ...
Graph neural networks (GNN) have become the default machine learning model for relational datasets, ...
This paper proposes a new optimization algorithm called Entropy-SGD for training deep neural network...