AbstractInductive Logic Programming (ILP) is concerned with the task of generalising sets of positive and negative examples with respect to background knowledge expressed as logic programs. Negation as Failure (NAF) is a key feature of logic programming which provides a means for nonmonotonic commonsense reasoning under incomplete information. But, so far, most ILP research has been aimed at Horn programs which exclude NAF, and has failed to exploit the full potential of normal programs that allow NAF. By contrast, Abductive Logic Programming (ALP), a related task concerned with explaining observations with respect to a prior theory, has been well studied and applied in the context of normal logic programs. This paper shows how ALP can be u...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
The representation language of Machine Learning has undergone a substantial evolution, starting fro...
AbstractInductive Logic Programming (ILP) is concerned with the task of generalising sets of positiv...
We present a novel approach to non-monotonic ILP and its implementation called TAL (Top-directed Abd...
Traditional Inductive Logic Programming (ILP) focuses on the setting where the target theory is a ge...
Inductive Logic Programming (ILP) is often situated as a research area emerging at the intersection ...
This thesis presents two novel inductive logic programming (ILP) approaches, based on the notion of ...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
We present the system LAP (Learning Abductive Programs) that is able to learn abductive logic progr...
We investigate how abduction and induction can be integrated into a common learning framework throug...
Knowledge representation and reasoning (KR&R) and machine learning are two important fields in a...
Normal logic programs are usually shorter and easier to write and understand than definite logic pro...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
Inductive Logic Programming (ILP) is a new discipline which investigates the inductive construction ...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
The representation language of Machine Learning has undergone a substantial evolution, starting fro...
AbstractInductive Logic Programming (ILP) is concerned with the task of generalising sets of positiv...
We present a novel approach to non-monotonic ILP and its implementation called TAL (Top-directed Abd...
Traditional Inductive Logic Programming (ILP) focuses on the setting where the target theory is a ge...
Inductive Logic Programming (ILP) is often situated as a research area emerging at the intersection ...
This thesis presents two novel inductive logic programming (ILP) approaches, based on the notion of ...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
We present the system LAP (Learning Abductive Programs) that is able to learn abductive logic progr...
We investigate how abduction and induction can be integrated into a common learning framework throug...
Knowledge representation and reasoning (KR&R) and machine learning are two important fields in a...
Normal logic programs are usually shorter and easier to write and understand than definite logic pro...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
Inductive Logic Programming (ILP) is a new discipline which investigates the inductive construction ...
The learning system Progol5 and the inference method of Bottom Generalisation are firmly established...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
The representation language of Machine Learning has undergone a substantial evolution, starting fro...