Graph neural networks are a versatile machine learning architecture that received a lot of attention recently due to its wide range of applications. In this technical report, we present an implementation of graph convolution and graph pooling layers for TensorFlow-Keras models, which allows a seamless and flexible integration into standard Keras layers to set up graph models in a functional way. We developed the Keras Graph Convolutional Neural Network Python package kgcnn based on TensorFlow-Keras which focus on a transparent tensor structure passed between layers and an ease-of-use mindset
Deep learning has become the dominant approach in coping with various tasks in Natural LanguageProce...
International audienceWe introduce a family of multilayer graph kernels and establish new links betw...
From social networks to biological networks, graphs are a natural way to represent a diverse set of ...
Graph neural networks have enabled the application of deep learning to problems that can be describe...
Graph data is omnipresent and has a wide variety of applications, such as in natural science, social...
Python is one of the most widely adopted programming languages, having replaced a number of those in...
Graph Neural Networks (GNNs) have exploded onto the machine learning scene in recent years owing to ...
TensorFlow GNN (TF-GNN) is a scalable library for Graph Neural Networks in TensorFlow. It is designe...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
Graph neural networks (GNNs) extends the functionality of traditional neural networks to graph-struc...
In this work, we extend the formulation of the spatial-based graph convolutional networks with a new...
This project will explore some of the most prominent Graph Neural Network variants and apply them to...
In order to extend Knowledge Enhanced Neural Networks, we investigate the replicability of the appro...
Molecular machine learning (ML) has proven important for tackling various molecular problems, such a...
In this paper we present mlGeNN – a Python library for the conversion of artificial neural networks (...
Deep learning has become the dominant approach in coping with various tasks in Natural LanguageProce...
International audienceWe introduce a family of multilayer graph kernels and establish new links betw...
From social networks to biological networks, graphs are a natural way to represent a diverse set of ...
Graph neural networks have enabled the application of deep learning to problems that can be describe...
Graph data is omnipresent and has a wide variety of applications, such as in natural science, social...
Python is one of the most widely adopted programming languages, having replaced a number of those in...
Graph Neural Networks (GNNs) have exploded onto the machine learning scene in recent years owing to ...
TensorFlow GNN (TF-GNN) is a scalable library for Graph Neural Networks in TensorFlow. It is designe...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
Graph neural networks (GNNs) extends the functionality of traditional neural networks to graph-struc...
In this work, we extend the formulation of the spatial-based graph convolutional networks with a new...
This project will explore some of the most prominent Graph Neural Network variants and apply them to...
In order to extend Knowledge Enhanced Neural Networks, we investigate the replicability of the appro...
Molecular machine learning (ML) has proven important for tackling various molecular problems, such a...
In this paper we present mlGeNN – a Python library for the conversion of artificial neural networks (...
Deep learning has become the dominant approach in coping with various tasks in Natural LanguageProce...
International audienceWe introduce a family of multilayer graph kernels and establish new links betw...
From social networks to biological networks, graphs are a natural way to represent a diverse set of ...