溯因约束逻辑规划

A.C. Kakas, A. Michael, C. Mourlas
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引用次数: 118

摘要

本文提出了溯因约束逻辑规划(ACLP)的框架,它将溯因逻辑规划(ALP)和约束逻辑规划(CLP)相结合。在ACLP中,溯因任务通过与约束求解的非平凡集成得到支持和增强。将约束求解集成到溯因推理中,促进了构造溯因的一般形式,并使溯因能够应用于计算要求高的问题。本文研究了ACLP框架的形式声明语义和操作语义及其在各种问题中的应用。讨论了ACLP计算的一般特点及其在问题中的应用。基于ECLiPSe的CLP语言之上的ACLP框架实现的经验结果表明,ACLP在计算上是可行的,其性能可与构建它的底层CLP框架相媲美。此外,我们的实验显示了ACLP的自然能力,可以轻松地适应原始问题的新需求或不断变化的需求。因此,ACLP结合了溯因法提供的高级表示的模块化和灵活性的优点,以及低级专门约束求解的计算效率。
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ACLP: Abductive Constraint Logic Programming

This paper presents the framework of Abductive Constraint Logic Programming (ACLP), which integrates Abductive Logic Programming (ALP) and Constraint Logic Programming (CLP). In ACLP, the task of abduction is supported and enhanced by its non-trivial integration with constraint solving. This integration of constraint solving into abductive reasoning facilitates a general form of constructive abduction and enables the application of abduction to computationally demanding problems. The paper studies the formal declarative and operational semantics of the ACLP framework together with its application to various problems. The general characteristics of the computation of ACLP and of its application to problems are also discussed. Empirical results based on an implementation of the ACLP framework on top of the CLP language of ECLiPSe show that ACLP is computationally viable, with performance comparable to the underlying CLP framework on which it is built. In addition, our experiments show the natural ability for ACLP to accommodate easily and in a robust way new or changing requirements of the original problem. ACLP thus combines the advantages of modularity and flexibility of the high-level representation afforded by abduction together with the computational effectiveness of low-level specialised constraint solving.

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