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Learning concepts and their unions from positive data with refinement operators

机译:与精炼运营商从积极数据中学习概念及其结合

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This paper is concerned with a sufficient condition under which a concept class is learnable in Gold's classical model of identification in the limit from positive data. The standard principle of learning algorithms working under this model is called the MINL strategy, which is to conjecture a hypothesis representing a minimal concept among the ones consistent with the given positive data. The minimality of a concept is defined with respect to the set-inclusion relation - the strategy is semantics-based. On the other hand, refinement operators have been developed in the field of learning logic programs, where a learner constructs logic programs as hypotheses consistent with given logical formulae. Refinement operators have syntax-based definitions - they are defined based on inference rules in first-order logic. This paper investigates the relation between the MINL strategy and refinement operators in inductive inference. We first show that if a hypothesis space admits a refinement operator with certain properties, the concept class will be learnable by an algorithm based on the MINL strategy. We then present an additional condition that ensures the learnability of the class of unbounded finite unions of concepts. Furthermore, we show that under certain assumptions a learning algorithm runs in polynomial time.
机译:本文涉及一个充分的条件,在这种条件下,可以在Gold的经典识别模型中以正数为极限学习概念类。在该模型下工作的学习算法的标准原理称为MINL策略,它是在与给定的正向数据一致的假设中推测一个代表最小概念的假设。相对于集合-包含关系定义概念的最小值-该策略基于语义。另一方面,在学习逻辑程序的领域中已经开发了精化运算符,其中学习者将逻辑程序构造为与给定逻辑公式一致的假设。提炼运算符具有基于语法的定义-它们是根据一阶逻辑中的推理规则定义的。本文研究了归纳推理中的MINL策略和细化算子之间的关系。我们首先显示,如果假设空间允许具有某些属性的细化算子,则可以通过基于MINL策略的算法来学习概念类。然后,我们提出一个附加条件,以确保概念的无穷有限并集的可学习性。此外,我们表明,在某些假设下,学习算法会在多项式时间内运行。

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