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Nonmonotonic abductive inductive learning

机译:非单调的归纳归纳学习

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Inductive Logic Programming (ILP) is concerned with the task of generalising sets of positive and negative examples with respect to background knowledge expressed as logic programs. Negation as Failure (NAF) is a key feature of logic programming which provides a means for nonmonotonic commonsense reasoning under incomplete information. But, so far, most ILP research has been aimed at Horn programs which exclude NAF, and has failed to exploit the full potential of normal programs that allow NAF. By contrast, Abductive Logic Programming (ALP), a related task concerned with explaining observations with respect to a prior theory, has been well studied and applied in the context of normal logic programs. This paper shows how ALP can be used to provide a semantics and proof procedure for nonmonotonic ILP that utilises practical methods of language and search bias to reduce the search space. This is done by lifting an existing method called Hybrid Abductive Inductive Learning (HAIL) from Horn clauses to normal logic programs. To demonstrate its potential benefits, the resulting system, called XHAIL, is applied to a process modelling case study involving a nonmonotonic temporal Event Calculus (EC).
机译:归纳逻辑编程(ILP)涉及将表达为逻辑程序的背景知识归纳为一组正例和负例的任务。否定失败(NAF)是逻辑编程的关键特征,它为不完整信息下的非单调常识推理提供了一种手段。但是,到目前为止,大多数ILP研究都针对不包括NAF的Horn计划,并且未能充分利用允许NAF的正常计划的全部潜力。相比之下,归纳逻辑程序设计(ALP)是一项与解释先验理论有关的观察结果的相关任务,已经得到了很好的研究并将其应用到常规逻辑程序的上下文中。本文展示了如何使用ALP为非单调ILP提供语义和证明过程,该过程利用语言和搜索偏差的实用方法来减少搜索空间。这是通过将现有的称为混合归纳归纳学习(HAIL)的方法从Horn子句提升到常规逻辑程序来完成的。为了证明其潜在的好处,将所得的系统名为XHAIL应用于涉及非单调时间事件演算(EC)的过程建模案例研究。

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