准确的学习

Montserrat Hermo, A. Ozaki
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引用次数: 2

摘要

计算学习理论中的一个主要问题是合取范式(CNF)的一类公式是否有效可学习。虽然我们知道这个类不能只使用成员查询或等价查询进行多项式学习,但是CNF类是否可以使用这两种查询进行多项式学习是开放的。关于CNF类限制的一个重要结果是命题Horn公式在Angluin的精确学习模型中是多项式时间可学习的,该模型具有隶属关系和等价查询。在这项工作中,我们突破了这一界限,并证明了非平凡扩展命题Horn的多值依赖公式(MVDF)类可以从解释中多项式地学习。然后,我们提供了Angluin模型中学习问题之间约简的概念,表明该算法的转换足以有效地从数据关系中学习多值数据库依赖关系。我们还通过简化表明,我们的主要结果扩展了已知的先前结果,并允许我们为它们找到替代解决方案。
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Exact Learning
A major problem in computational learning theory is whether the class of formulas in conjunctive normal form (CNF) is efficiently learnable. Although it is known that this class cannot be polynomially learned using either membership or equivalence queries alone, it is open whether the CNF class can be polynomially learned using both types of queries. One of the most important results concerning a restriction of the CNF class is that propositional Horn formulas are polynomial time learnable in Angluin’s exact learning model with membership and equivalence queries. In this work, we push this boundary and show that the class of multivalued dependency formulas (MVDF), which non-trivially extends propositional Horn, is polynomially learnable from interpretations. We then provide a notion of reduction between learning problems in Angluin’s model, showing that a transformation of the algorithm suffices to efficiently learn multivalued database dependencies from data relations. We also show via reductions that our main result extends well known previous results and allows us to find alternative solutions for them.
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