This paper aims to bridge this gap between neuro-symbolic learning (NSL) and graph neural networks (GNN) approaches and provide a comparative study. We argue that the natural evolution of NSL leads to GNNs, while the logic programming foundations of NSL can bring powerful tools to improve the way information is represented and pre-processed for the GNN. In order to make this comparison, we propose HetSAGE, a GNN architecture that can efficiently deal with the resulting heterogeneous graphs that represent typical NSL learning problems. We show that our approach outperforms the state-of-the-art on 3 NSL tasks: CORA, MUTA188 and MovieLens
In several applications the information is naturally represented by graphs. Traditional approaches c...
In several applications the information is naturally represented by graphs. Traditional approaches c...
The graph neural network (GNN) is a type of powerful deep learning model used to process graph data ...
This paper aims to bridge this gap between neuro-symbolic learning (NSL) and graph neural networks (...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Scene graph generation (SGG) aims to detect objects and predict their pairwise relationships within ...
In the last decade, connectionist models have been proposed that can process structured information ...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
In the last decade, connectionist models have been proposed that can process structured information ...
In the last decade, connectionist models have been proposed that can process structured information ...
In the last decade, connectionist models have been proposed that can process structured information ...
In this paper, we focus on graph representation learning of heterogeneous information network (HIN),...
Recent scene graph generation (SGG) frameworks have focused on learning complex relationships among ...
Heterogeneous graph learning has drawn significant attentions in recent years, due to the success of...
In several applications the information is naturally represented by graphs. Traditional approaches c...
In several applications the information is naturally represented by graphs. Traditional approaches c...
The graph neural network (GNN) is a type of powerful deep learning model used to process graph data ...
This paper aims to bridge this gap between neuro-symbolic learning (NSL) and graph neural networks (...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Updated version, draft of accepted IJCAI2020 Survey PaperInternational audienceNeural-symbolic compu...
Scene graph generation (SGG) aims to detect objects and predict their pairwise relationships within ...
In the last decade, connectionist models have been proposed that can process structured information ...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
In the last decade, connectionist models have been proposed that can process structured information ...
In the last decade, connectionist models have been proposed that can process structured information ...
In the last decade, connectionist models have been proposed that can process structured information ...
In this paper, we focus on graph representation learning of heterogeneous information network (HIN),...
Recent scene graph generation (SGG) frameworks have focused on learning complex relationships among ...
Heterogeneous graph learning has drawn significant attentions in recent years, due to the success of...
In several applications the information is naturally represented by graphs. Traditional approaches c...
In several applications the information is naturally represented by graphs. Traditional approaches c...
The graph neural network (GNN) is a type of powerful deep learning model used to process graph data ...