首页> 外文会议>International conference on spatial information theory >Spatial Symmetry Driven Pruning Strategies for Efficient Declarative Spatial Reasoning
【24h】

Spatial Symmetry Driven Pruning Strategies for Efficient Declarative Spatial Reasoning

机译:有效声明性空间推理的空间对称驱动修剪策略

获取原文

摘要

Declarative spatial reasoning denotes the ability to (declar-atively) specify and solve real-world problems related to geometric and qualitative spatial representation and reasoning within standard knowledge representation and reasoning (KR) based methods (e.g., logic programming and derivatives). One approach for encoding the semantics of spatial relations within a declarative programming framework is by systems of polynomial constraints. However, solving such constraints is computationally intractable in general (i.e. the theory of real-closed fields). We present a new algorithm, implemented within the declarative spatial reasoning system CLP(QS), that drastically improves the performance of deciding the consistency of spatial constraint graphs over conventional polynomial encodings. We develop pruning strategies founded on spatial symmetries that form equivalence classes (based on affine transformations) at the qualitative spatial level. Moreover, pruning strategies are themselves formalised as knowledge about the properties of space and spatial symmetries. We evaluate our algorithm using a range of benchmarks in the class of contact problems, and proofs in mereology and geometry. The empirical results show that CLP(QS) with knowledge-based spatial pruning outperforms conventional polynomial encodings by orders of magnitude, and can thus be applied to problems that are otherwise unsolvable in practice.
机译:声明性空间推理表示在基于标准知识表示和推理(KR)的方法(例如逻辑编程和派生方法)中(声明性)指定和解决与几何和定性空间表示以及推理有关的现实问题的能力。一种在声明性编程框架内对空间关系的语义进行编码的方法是通过多项式约束系统。然而,通常在计算上难以解决这样的约束(即,实地封闭场的理论)。我们提出了一种在声明性空间推理系统CLP(QS)中实现的新算法,该算法大大提高了确定空间约束图与常规多项式编码的一致性的性能。我们开发基于在空间定性水平上形成等价类(基于仿射变换)的空间对称性的修剪策略。此外,修剪策略本身被形式化为关于空间特性和空间对称性的知识。我们在接触问题类别中使用一系列基准评估了算法,并在符号学和几何学方面提供了证明。实验结果表明,具有基于知识的空间修剪的CLP(QS)优于传统的多项式编码,其数量级更高,因此可以应用于在实践中无法解决的问题。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号