Traditional Inductive Logic Programming (ILP) focuses on the setting where the target theory is a generalisation of the observations. This is known as Observational Predicate Learning (OPL). In the Theory Completion setting the target theory is not in the same predicate as the observations (non-OPL). This thesis investigates two alternative simple extensions to traditional ILP to perform non-OPL or Theory Completion. Both techniques perform extraction-case abduction from an existing background theory and one seed observation. The first technique -- Logical Back-propagation -- modifies the existing background theory so that abductions can be achieved by a form of constructive negation using a standard SLD-resolution theorem prover. The secon...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
We propose an approach for the integration of abduction and induction in Logic Programming. We defi...
Inductive Logic Programming (ILP) is a new discipline which investigates the inductive construction ...
AbstractInductive Logic Programming (ILP) is the area of AI which deals with the induction of hypoth...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
AbstractInductive Logic Programming (ILP) is concerned with the task of generalising sets of positiv...
We present the system LAP (Learning Abductive Programs) that is able to learn abductive logic progr...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Three relevant areas of interest in symbolic Machine Learning are incremental supervised learning, m...
We investigate how abduction and induction can be integrated into a common learning framework. In pa...
This thesis presents two novel inductive logic programming (ILP) approaches, based on the notion of ...
The representation language of Machine Learning has undergone a substantial evolution, starting fro...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
We propose an approach for the integration of abduction and induction in Logic Programming. We defi...
Inductive Logic Programming (ILP) is a new discipline which investigates the inductive construction ...
AbstractInductive Logic Programming (ILP) is the area of AI which deals with the induction of hypoth...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
AbstractInductive Logic Programming (ILP) is concerned with the task of generalising sets of positiv...
We present the system LAP (Learning Abductive Programs) that is able to learn abductive logic progr...
Inductive Logic Programming (ILP) is a subfield of Machine Learning with foundations in logic progra...
Three relevant areas of interest in symbolic Machine Learning are incremental supervised learning, m...
We investigate how abduction and induction can be integrated into a common learning framework. In pa...
This thesis presents two novel inductive logic programming (ILP) approaches, based on the notion of ...
The representation language of Machine Learning has undergone a substantial evolution, starting fro...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
We propose an approach for the integration of abduction and induction in Logic Programming. We defi...