Many inductive systems, including ILP systems, learn from a knowledge base that is structured around examples. In practical situations this example-centered representation can cause a lot of redundancy. For instance, when learning from episodes (e.g. from games), the knowledge base contains consecutive states of a world. Each state is usually described completely even though consecutive states may differ only slightly. Similar redundancies occur when the knowledge base stores examples that share common structures (e.g. when representing complex objects as machines or molecules). These two types of redundancies can place a heavy burden on memory resources. In this paper we propose a method for representing knowledge bases in a more efficient...
To learn effectively, a system needs to use all the knowledge that is available. Explanation-based l...
Structured knowledge about concepts plays an increasingly important role in areas such as informatio...
Knowledge representation is an active field of Artificial Intelligence research. The method of repre...
Many inductive systems, including ILP systems, learn from a knowledge base that is structured around...
In many applications of Inductive Logic Programming (ILP), learning occurs from a knowledge base tha...
In many applications of Inductive Logic Programming (ILP), learning occurs from a knowledge base tha...
A necessary function of ILP systems is to test whether rulesets intensionally cover examples. In gen...
International audienceKnowledge base completion refers to the task of adding new, missing, links bet...
Human knowledge provides a formal understanding of the world. Knowledge graphs that represent struct...
The ability to generalize from examples depends on the algorithm employed for learning and the insta...
A knowledge graph (KG) represents real-world entities as well as their properties and relationships...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
This paper provides an extensive overview of the use of knowledge graphs in the context of Explainab...
The field of Knowledge Representation is devoted to the study of how knowledge can be represented an...
This thesis deals with one important aspect of Artificial Intelligence, knowledge representation and...
To learn effectively, a system needs to use all the knowledge that is available. Explanation-based l...
Structured knowledge about concepts plays an increasingly important role in areas such as informatio...
Knowledge representation is an active field of Artificial Intelligence research. The method of repre...
Many inductive systems, including ILP systems, learn from a knowledge base that is structured around...
In many applications of Inductive Logic Programming (ILP), learning occurs from a knowledge base tha...
In many applications of Inductive Logic Programming (ILP), learning occurs from a knowledge base tha...
A necessary function of ILP systems is to test whether rulesets intensionally cover examples. In gen...
International audienceKnowledge base completion refers to the task of adding new, missing, links bet...
Human knowledge provides a formal understanding of the world. Knowledge graphs that represent struct...
The ability to generalize from examples depends on the algorithm employed for learning and the insta...
A knowledge graph (KG) represents real-world entities as well as their properties and relationships...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
This paper provides an extensive overview of the use of knowledge graphs in the context of Explainab...
The field of Knowledge Representation is devoted to the study of how knowledge can be represented an...
This thesis deals with one important aspect of Artificial Intelligence, knowledge representation and...
To learn effectively, a system needs to use all the knowledge that is available. Explanation-based l...
Structured knowledge about concepts plays an increasingly important role in areas such as informatio...
Knowledge representation is an active field of Artificial Intelligence research. The method of repre...