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PAC-learnability of determinate logic programs

机译:确定逻辑程序的PAC可学习性

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摘要

The field of Inductive Logic Programming (ILP) is concerned with inducing logic programs from examples in the presence of background knowledge. This paper defines the ILP problem, and describes the various syntactic restrictions that are commonly used for learning first-order representations. We then derive some positive results concerning the learnability of these restricted classes of logic programs, by reduction to a standard propositional learning problem. More specifically, k-clause predicate definitions consisting of determinate, function-free, non-recursve Horn clauses with variables of bounded depth are polynomially learnable under simple distributions. Similarly, recursive k-clause definitions are polynomially learnable under simple distributions if we allow existential and membership queries about the target concept.

机译:

归纳逻辑编程(ILP)领域涉及在存在背景知识的情况下从示例中归纳逻辑程序。本文定义了ILP问题,并描述了通常用于学习一阶表示形式的各种语法限制。然后,通过简化为标准命题学习问题,我们得出了有关这些逻辑程序受限类的可学习性的一些积极结果。更具体地讲, k 子句谓词定义由具有确定深度的变量的确定的,无函数的,非递归的Horn子句组成,在简单的分布下可以多项式学习。同样,如果允许关于目标概念的存在性和成员资格查询,则递归 k 子句定义在简单分布下可以多项式学习。

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