The rapid proliferation of knowledge graphs (KGs) has changed the paradigm for various AI-related applications. Despite their large sizes, modern KGs are far from complete and comprehensive. This has motivated the research in knowledge graph completion (KGC), which aims to infer missing values in incomplete knowledge triples. However, most existing KGC models treat the triples in KGs independently without leveraging the inherent and valuable information from the local neighborhood surrounding an entity. To this end, we propose a Relational Graph neural network with Hierarchical ATtention (RGHAT) for the KGC task. The proposed model is equipped with a two-level attention mechanism: (i) the first level is the relation-level attention, which i...
Understanding the meaning, semantics and nuances of entities and the relationships between entities ...
Large-scale Knowledge Graphs (KGs), such as Wikipedia and many enterprises or other domain-specific ...
Knowledge graph embedding can learn low-rank vector representations for knowledge graph entities and...
Knowledge graphs enable a wide variety of applications, including question answering and information...
We propose a general joint representation learning framework for knowledge acquisition (KA) on two t...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
The recent proliferation of knowledge graphs (KGs) coupled with incomplete or partial information, i...
Few-shot knowledge graph reasoning is a research focus in the field of knowledge graph reasoning. At...
Knowledge graphs (KGs) express relationships between entity pairs, and many real-life problems can b...
We present an effective GNN-based knowledge graph embedding model, named WGE, to capture entity- and...
International audienceGraph data is omnipresent and has a wide variety of applications, such as in n...
Few-shot knowledge graph completion (FKGC) tasks involve determining the authenticity of triple cand...
Knowledge graph embedding techniques are widely used for knowledge graph refinement tasks such as gr...
International audienceThe open nature of Knowledge Graphs (KG) often implies that they are incomplet...
The aim of knowledge graph (KG) completion is to extend an incomplete KG with missing triples. Popul...
Understanding the meaning, semantics and nuances of entities and the relationships between entities ...
Large-scale Knowledge Graphs (KGs), such as Wikipedia and many enterprises or other domain-specific ...
Knowledge graph embedding can learn low-rank vector representations for knowledge graph entities and...
Knowledge graphs enable a wide variety of applications, including question answering and information...
We propose a general joint representation learning framework for knowledge acquisition (KA) on two t...
Knowledge graphs (KGs) facilitate a wide variety of applications due to their ability to store relat...
The recent proliferation of knowledge graphs (KGs) coupled with incomplete or partial information, i...
Few-shot knowledge graph reasoning is a research focus in the field of knowledge graph reasoning. At...
Knowledge graphs (KGs) express relationships between entity pairs, and many real-life problems can b...
We present an effective GNN-based knowledge graph embedding model, named WGE, to capture entity- and...
International audienceGraph data is omnipresent and has a wide variety of applications, such as in n...
Few-shot knowledge graph completion (FKGC) tasks involve determining the authenticity of triple cand...
Knowledge graph embedding techniques are widely used for knowledge graph refinement tasks such as gr...
International audienceThe open nature of Knowledge Graphs (KG) often implies that they are incomplet...
The aim of knowledge graph (KG) completion is to extend an incomplete KG with missing triples. Popul...
Understanding the meaning, semantics and nuances of entities and the relationships between entities ...
Large-scale Knowledge Graphs (KGs), such as Wikipedia and many enterprises or other domain-specific ...
Knowledge graph embedding can learn low-rank vector representations for knowledge graph entities and...