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Learning Through Hypothesis Refinement Using Answer Set Programming

机译:使用答案集编程通过假设提炼学习

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Recent work has shown how a meta-level approach to inductive logic programming, which uses a semantic-preserving transformation of a learning task into an abductive reasoning problem, can address a large class of multi-predicate, nonmonotonic learning in a sound and complete manner. An Answer Set Programming (ASP) implementation, called ASPAL, has been proposed that uses ASP fixed point computation to solve a learning task, thus delegating the search to the ASP solver. Although this metarlevel approach has been shown to be very general and flexible, the scalability of its ASP implementation is constrained by the grounding of the meta-theory. In this paper we build upon these results and propose a new meta-level learning approach that overcomes the scalability problem of ASPAL by breaking the learning process up into small manageable steps and using theory revision over the metar level representation of the hypothesis space to improve the hypothesis computed at each step. We empirically evaluate the computational gain with respect to ASPAL using two different answer set solvers.
机译:最近的工作表明,归纳逻辑编程的元级别方法如何将学习任务的语义保留转换为归纳推理问题,如何以合理,完整的方式解决大量的多谓词,非单调学习。 。已经提出了一种名为ASPAL的答案集编程(ASP)实现,该实现使用ASP定点计算来解决学习任务,从而将搜索委托给ASP解算器。尽管已证明这种元级方法非常通用和灵活,但其ASP实现的可伸缩性受到元论基础的限制。在本文中,我们基于这些结果,提出了一种新的元级学习方法,该方法通过将学习过程分解为可管理的小步骤,并通过对假设空间的元级表示进行理论修正来改善ASPAL的可扩展性,从而克服了ASPAL的可扩展性问题。在每个步骤计算的假设。我们使用两个不同的答案集求解器以经验方式评估相对于ASPAL的计算增益。

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