Deep learning techniques are increasingly being applied to solve various machine learning tasks that use Knowledge Graphs as input data. However, these techniques typically learn a latent representation for the entities of interest internally, which is then used to make decisions. This latent representation is often not comprehensible to humans, which is why deep learning techniques are often considered to be black boxes. In this paper, we present INK: Instance Neighbouring by using Knowledge, a novel technique to learn binary feature-based representations, which are comprehensible to humans, for nodes of interest in a knowledge graph. We demonstrate the predictive power of the node representations obtained through INK by feeding them to cl...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Message passing models for machine learning on knowledge graphs offer a promising direction for inte...
We propose an approach for knowledge graph (KG) completion that leverages multimodal information on ...
Deep learning techniques are increasingly being applied to solve various machine learning tasks that...
International audienceIn the last decade Knowledge Graphs have undergone an impressive expansion, ma...
International audienceKnowledge graphs embeddings (KGE) are lately at the center of many artificial ...
Knowledge Graphs contain factual information about the world, and providing a structural representa...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
A knowledge graph (KG) is a data structure which represents entities and relations as the vertices ...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
Previous knowledge graph embedding approaches usually map entities to representations and utilize sc...
Heterogeneous knowledge graphs are emerging as an abstraction to represent complex data, such as soc...
Background Leveraging graphs for machine learning tasks can result in more expressive power as extra...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Message passing models for machine learning on knowledge graphs offer a promising direction for inte...
We propose an approach for knowledge graph (KG) completion that leverages multimodal information on ...
Deep learning techniques are increasingly being applied to solve various machine learning tasks that...
International audienceIn the last decade Knowledge Graphs have undergone an impressive expansion, ma...
International audienceKnowledge graphs embeddings (KGE) are lately at the center of many artificial ...
Knowledge Graphs contain factual information about the world, and providing a structural representa...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
A knowledge graph (KG) is a data structure which represents entities and relations as the vertices ...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
Previous knowledge graph embedding approaches usually map entities to representations and utilize sc...
Heterogeneous knowledge graphs are emerging as an abstraction to represent complex data, such as soc...
Background Leveraging graphs for machine learning tasks can result in more expressive power as extra...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Graph neural networks and other machine learning models offer a promising direction for interpretabl...
Message passing models for machine learning on knowledge graphs offer a promising direction for inte...
We propose an approach for knowledge graph (KG) completion that leverages multimodal information on ...