In this paper a new machine learning approach to the study of Multi-Relational Graphs as semantic data structures is presented. It shows how vector representations that maintain semantic and topological features of the original data can be obtained from neural encoding architectures and considering the topological properties of the graph. Also, semantic features of these new representations are tested by using some machine learning tasks and new directions on efficient link discovery methodologies on large relational datasets are investigated.Junta de Andalucía TIC-6064Ministerio de Economía y Competitividad TIN2013-41086-
Recently, knowledge graph embedding methods have attracted numerous researchers’ interest due to the...
The world around us is composed of objects each having relations with other objects. The objects and...
We consider the problem of embedding entities and relationships of multi-relational data in low-dime...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Multi-relational representation learning methods encode entities or concepts of a knowledge graph in...
Multi-relational representation learning methods encode entities or concepts of a knowledge graph in...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Representation learning aims to encode the relationships of research objects into low-dimensional, c...
Link discovery is the process of identifying complex patterns from (multi)-relational data. The qual...
Relational data representations have become an increasingly important topic due to the recent prolif...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
A multilayered graph is a dispensable data representation tool to comprehend and mine the richness a...
We present SeVeN (Semantic Vector Networks), a hybrid resource that encodes relationships between wo...
Knowledge graphs play a significant role in many intelligent systems such as semantic search and rec...
Recently, knowledge graph embedding methods have attracted numerous researchers’ interest due to the...
The world around us is composed of objects each having relations with other objects. The objects and...
We consider the problem of embedding entities and relationships of multi-relational data in low-dime...
Real-world entities (e.g., people and places) are often connected via relations, forming multi-relat...
Multi-relational representation learning methods encode entities or concepts of a knowledge graph in...
Multi-relational representation learning methods encode entities or concepts of a knowledge graph in...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Representation learning aims to encode the relationships of research objects into low-dimensional, c...
Link discovery is the process of identifying complex patterns from (multi)-relational data. The qual...
Relational data representations have become an increasingly important topic due to the recent prolif...
Graph neural networks (GNNs) have emerged in recent years as a very powerful and popular modeling to...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
A multilayered graph is a dispensable data representation tool to comprehend and mine the richness a...
We present SeVeN (Semantic Vector Networks), a hybrid resource that encodes relationships between wo...
Knowledge graphs play a significant role in many intelligent systems such as semantic search and rec...
Recently, knowledge graph embedding methods have attracted numerous researchers’ interest due to the...
The world around us is composed of objects each having relations with other objects. The objects and...
We consider the problem of embedding entities and relationships of multi-relational data in low-dime...