Dynamics always exist in complex systems. Graphs (complex networks) are a mathematical form for describing a complex system abstractly. Dynamics can be learned efficiently from the structure and dynamics state of a graph. Learning the dynamics in graphs plays an important role in predicting and controlling complex systems. Most of the methods for learning dynamics in graphs run slowly in large graphs. The complexity of the large graph’s structure and its nonlinear dynamics aggravate this problem. To overcome these difficulties, we propose a general framework with two novel methods in this paper, the Dynamics-METIS (D-METIS) and the Partitioned Graph Neural Dynamics Learner (PGNDL). The general framework combines D-METIS and PGNDL to perform...
We propose Graph-Coupled Oscillator Networks (GraphCON), a novel framework for deep learning on grap...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
This paper develops a Deep Graph Operator Network (DeepGraphONet) framework that learns to approxima...
We consider the problem of inferring the hidden structure of high-dimensional dynamic systems from t...
Many complex systems are composed of interacting parts, and the underlying laws are usually simple a...
We introduce an overview of methods for learning in structured domains covering foundational works d...
The analysis of dynamic systems provides insights into their time-dependent characteristics. This en...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Molecular dynamics (MD) simulation is the workhorse of various scientific domains but is limited by ...
Data-driven approximations of ordinary differential equations offer a promising alternative to class...
Structures or graphs are pervasive in our lives. Although deep learning has achieved tremendous succ...
Enabling robots to perform complex dynamic tasks such as picking up an object in one sweeping motion...
In discrete processes, as computational or genetic ones, there are many entities and each entity has...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
We propose Graph-Coupled Oscillator Networks (GraphCON), a novel framework for deep learning on grap...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
This paper develops a Deep Graph Operator Network (DeepGraphONet) framework that learns to approxima...
We consider the problem of inferring the hidden structure of high-dimensional dynamic systems from t...
Many complex systems are composed of interacting parts, and the underlying laws are usually simple a...
We introduce an overview of methods for learning in structured domains covering foundational works d...
The analysis of dynamic systems provides insights into their time-dependent characteristics. This en...
The theme of this dissertation is machine learning on graph data. Graphs are generic models of signa...
Dynamical systems have been used to describe a vast range of phenomena, including physical sciences...
Molecular dynamics (MD) simulation is the workhorse of various scientific domains but is limited by ...
Data-driven approximations of ordinary differential equations offer a promising alternative to class...
Structures or graphs are pervasive in our lives. Although deep learning has achieved tremendous succ...
Enabling robots to perform complex dynamic tasks such as picking up an object in one sweeping motion...
In discrete processes, as computational or genetic ones, there are many entities and each entity has...
We propose dynamic graph-based relational mining approach to learn structural patterns in graphs or ...
We propose Graph-Coupled Oscillator Networks (GraphCON), a novel framework for deep learning on grap...
Dynamical systems are used to model physical phenomena whose state changes over time. This paper pro...
This paper develops a Deep Graph Operator Network (DeepGraphONet) framework that learns to approxima...