Many complex processes can be viewed as dynamical systems of interacting agents. In many cases, only the state sequences of individual agents are observed, while the interacting relations and the dynamical rules are unknown. The neural relational inference (NRI) model adopts graph neural networks that pass messages over a latent graph to jointly learn the relations and the dynamics based on the observed data. However, NRI infers the relations independently and suffers from error accumulation in multi-step prediction at dynamics learning procedure. Besides, relation reconstruction without prior knowledge becomes more difficult in more complex systems. This paper introduces efficient message passing mechanisms to the graph neural networks wit...
Networks encode dependencies between entities (people, computers, proteins) and allow us to study ph...
Knowledge graphs typically undergo open-ended growth of new relations. This cannot be well handled b...
Endowing robots with human-like physical reasoning abilities remains challenging. We argue that exis...
© 2019 Neural information processing systems foundation. All rights reserved. Graph neural networks ...
Interacting systems are prevalent in nature, from dynamical systems in physics to complex societal d...
Systems whose entities interact with each other are common. In many interacting systems, it is diffi...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
Many complex systems are composed of interacting parts, and the underlying laws are usually simple a...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Relation prediction is a fundamental task in network analysis which aims to predict the relationship...
In the last decade, connectionist models have been proposed that can process structured information ...
The world around us is composed of entities, each having various properties and participating in rel...
In the last decade, connectionist models have been proposed that can process structured information ...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Some new tasks are trivial to learn, while others are essentially impossible; what determines how ea...
Networks encode dependencies between entities (people, computers, proteins) and allow us to study ph...
Knowledge graphs typically undergo open-ended growth of new relations. This cannot be well handled b...
Endowing robots with human-like physical reasoning abilities remains challenging. We argue that exis...
© 2019 Neural information processing systems foundation. All rights reserved. Graph neural networks ...
Interacting systems are prevalent in nature, from dynamical systems in physics to complex societal d...
Systems whose entities interact with each other are common. In many interacting systems, it is diffi...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
Many complex systems are composed of interacting parts, and the underlying laws are usually simple a...
Relational data is ubiquitous in modern-day computing, and drives several key applications across mu...
Relation prediction is a fundamental task in network analysis which aims to predict the relationship...
In the last decade, connectionist models have been proposed that can process structured information ...
The world around us is composed of entities, each having various properties and participating in rel...
In the last decade, connectionist models have been proposed that can process structured information ...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Some new tasks are trivial to learn, while others are essentially impossible; what determines how ea...
Networks encode dependencies between entities (people, computers, proteins) and allow us to study ph...
Knowledge graphs typically undergo open-ended growth of new relations. This cannot be well handled b...
Endowing robots with human-like physical reasoning abilities remains challenging. We argue that exis...