Equivariant Graph neural Networks (EGNs) are powerful in characterizing the dynamics of multi-body physical systems. Existing EGNs conduct flat message passing, which, yet, is unable to capture the spatial/dynamical hierarchy for complex systems particularly, limiting substructure discovery and global information fusion. In this paper, we propose Equivariant Hierarchy-based Graph Networks (EGHNs) which consist of the three key components: generalized Equivariant Matrix Message Passing (EMMP) , E-Pool and E-UpPool. In particular, EMMP is able to improve the expressivity of conventional equivariant message passing, E-Pool assigns the quantities of the low-level nodes into high-level clusters, while E-UpPool leverages the high-level informatio...
Currently there exists rather promising new trend in machine leaning (ML) based on the relationship ...
This work presents Neural Equivariant Interatomic Potentials (NequIP), an E(3)-equivariant neural ne...
Humans have a remarkable capacity to understand the physical dynamics of objects in their environmen...
While (message-passing) graph neural networks have clear limitations in approximating permutation-eq...
Group equivariance (e.g. SE(3) equivariance) is a critical physical symmetry in science, from classi...
The automated segmentation of cortical areas has been a long-standing challenge in medical image ana...
Equivariant machine learning methods have shown wide success at 3D learning applications in recent y...
We present e3nn, a generalized framework for creating E(3) equivariant trainable functions, also kno...
Heterogeneous Graph Neural Network (HGNN) has been successfully employed in various tasks, but we ca...
Data over non-Euclidean manifolds, often discretized as surface meshes, naturally arise in computer ...
Composing Graph Neural Networks (GNNs) of operations that respect physical symmetries has been sugge...
Graph neural networks (GNN) have shown great advantages in many graph-based learning tasks but often...
Slinky, a helical elastic rod, is a seemingly simple structure with unusual mechanical behavior; for...
Incorporating symmetries can lead to highly data-efficient and generalizable models by defining equi...
Appears in: Proceedings of the 9th International Conference on Learning Representations, ICLR 2021. ...
Currently there exists rather promising new trend in machine leaning (ML) based on the relationship ...
This work presents Neural Equivariant Interatomic Potentials (NequIP), an E(3)-equivariant neural ne...
Humans have a remarkable capacity to understand the physical dynamics of objects in their environmen...
While (message-passing) graph neural networks have clear limitations in approximating permutation-eq...
Group equivariance (e.g. SE(3) equivariance) is a critical physical symmetry in science, from classi...
The automated segmentation of cortical areas has been a long-standing challenge in medical image ana...
Equivariant machine learning methods have shown wide success at 3D learning applications in recent y...
We present e3nn, a generalized framework for creating E(3) equivariant trainable functions, also kno...
Heterogeneous Graph Neural Network (HGNN) has been successfully employed in various tasks, but we ca...
Data over non-Euclidean manifolds, often discretized as surface meshes, naturally arise in computer ...
Composing Graph Neural Networks (GNNs) of operations that respect physical symmetries has been sugge...
Graph neural networks (GNN) have shown great advantages in many graph-based learning tasks but often...
Slinky, a helical elastic rod, is a seemingly simple structure with unusual mechanical behavior; for...
Incorporating symmetries can lead to highly data-efficient and generalizable models by defining equi...
Appears in: Proceedings of the 9th International Conference on Learning Representations, ICLR 2021. ...
Currently there exists rather promising new trend in machine leaning (ML) based on the relationship ...
This work presents Neural Equivariant Interatomic Potentials (NequIP), an E(3)-equivariant neural ne...
Humans have a remarkable capacity to understand the physical dynamics of objects in their environmen...