. The problem of learning universally quantified function free first order Horn expressions is studied. Several models of learning from equivalence and membership queries are considered, including the model where interpretations are examples (Learning from Interpretations), the model where clauses are examples (Learning from Entailment), models where extensional or intentional background knowledge is given to the learner (as done in Inductive Logic Programming) , and the model where the reasoning performance of the learner rather than identification is of interest (Learning to Reason). We present learning algorithms for all these tasks for the class of universally quantified function free Horn expressions. The algorithms are polynomial in t...
AbstractThe efficient learnability of restricted classes of logic programs is studied in the PAC fra...
AbstractIn this paper, quantified Horn formulas (QHORN) are investigated. We prove that the behavior...
The field of Inductive Logic Programming (ILP) is concerned with inducing logic pr~ grams from examp...
AbstractThe paper studies the learnability of Horn expressions within the framework of learning from...
A learning algorithm for the class of inequated range restricted Horn expressions is presented and p...
Abstract. A learning algorithm for the class of range restricted Horn expressions is presented and p...
The paper introduces LogAn-H — a system for learning first-order function-free Horn expressions from...
The paper introduces LOGAN-H —a system for learning first-order function-free Horn expressions from ...
A Horn definition is a set of Horn clauses with the same head literal. In this paper, we consider le...
. In this paper, we consider learning first-order Horn programs from entailment. In particular, we s...
This paper consider the problem of learning an unknown first-order Horn sentence H 3 from examples ...
AbstractIn the PAC-learning, or the query learning model, it has been an important open problem to d...
The efficient learnability of restricted classes of logic programs is studied in the PAC framework o...
Due to the inadequacy of attribute-only representations for many learning problems, there is now a r...
A learning algorithm is developed for a class of regular expressions equivalent to the class of all ...
AbstractThe efficient learnability of restricted classes of logic programs is studied in the PAC fra...
AbstractIn this paper, quantified Horn formulas (QHORN) are investigated. We prove that the behavior...
The field of Inductive Logic Programming (ILP) is concerned with inducing logic pr~ grams from examp...
AbstractThe paper studies the learnability of Horn expressions within the framework of learning from...
A learning algorithm for the class of inequated range restricted Horn expressions is presented and p...
Abstract. A learning algorithm for the class of range restricted Horn expressions is presented and p...
The paper introduces LogAn-H — a system for learning first-order function-free Horn expressions from...
The paper introduces LOGAN-H —a system for learning first-order function-free Horn expressions from ...
A Horn definition is a set of Horn clauses with the same head literal. In this paper, we consider le...
. In this paper, we consider learning first-order Horn programs from entailment. In particular, we s...
This paper consider the problem of learning an unknown first-order Horn sentence H 3 from examples ...
AbstractIn the PAC-learning, or the query learning model, it has been an important open problem to d...
The efficient learnability of restricted classes of logic programs is studied in the PAC framework o...
Due to the inadequacy of attribute-only representations for many learning problems, there is now a r...
A learning algorithm is developed for a class of regular expressions equivalent to the class of all ...
AbstractThe efficient learnability of restricted classes of logic programs is studied in the PAC fra...
AbstractIn this paper, quantified Horn formulas (QHORN) are investigated. We prove that the behavior...
The field of Inductive Logic Programming (ILP) is concerned with inducing logic pr~ grams from examp...