We introduce an inductive logic programming approach that combines classical divide-and-conquer search with modern constraint-driven search. Our anytime approach can learn optimal, recursive, and large programs and supports predicate invention. Our experiments on three domains (classification, inductive general game playing, and program synthesis) show that our approach can increase predictive accuracies and reduce learning times
International audienceIt is well known that modeling with constraints networks require a fair expert...
When machine learning programs from data, we ideally want to learn efficient rather than inefficient...
. This paper provides a brief introduction and overview of the emerging area of Inductive Constrain...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
The goal of inductive logic programming is to induce a set of rules (a logic program) that generalis...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
We describe an inductive logic programming (ILP) approach called learning from failures. In this app...
Abstract A new research area, Inductive Logic Programming, is presently emerging. While inheriting v...
Abstract. Program learning focuses on the automatic generation of programs satisfying the goal of a ...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
We developed and implemented an inductive logic programming system and the first order classifier, c...
. Inductive Logic Programming is mainly concerned with the problem of learning concept definitions ...
We investigate the problem of learning constraint satisfaction problems from an inductive logic prog...
International audienceIt is well known that modeling with constraints networks require a fair expert...
When machine learning programs from data, we ideally want to learn efficient rather than inefficient...
. This paper provides a brief introduction and overview of the emerging area of Inductive Constrain...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
The goal of inductive logic programming is to induce a set of rules (a logic program) that generalis...
The goal of inductive logic programming (ILP) is to search for a hypothesis that generalises trainin...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
This chapter describes an inductive learning method that derives logic programs and invents predicat...
We describe an inductive logic programming (ILP) approach called learning from failures. In this app...
Abstract A new research area, Inductive Logic Programming, is presently emerging. While inheriting v...
Abstract. Program learning focuses on the automatic generation of programs satisfying the goal of a ...
Inductive logic programming (ILP) is a form of logic-based machine learning. The goal is to induce a...
We developed and implemented an inductive logic programming system and the first order classifier, c...
. Inductive Logic Programming is mainly concerned with the problem of learning concept definitions ...
We investigate the problem of learning constraint satisfaction problems from an inductive logic prog...
International audienceIt is well known that modeling with constraints networks require a fair expert...
When machine learning programs from data, we ideally want to learn efficient rather than inefficient...
. This paper provides a brief introduction and overview of the emerging area of Inductive Constrain...