Spatial Symmetry Driven Pruning Strategies for Efficient Declarative Spatial Reasoning
June 16, 2015 Β· Declared Dead Β· π Conference On Spatial Information Theory
"No code URL or promise found in abstract"
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Authors
Carl Schultz, Mehul Bhatt
arXiv ID
1506.04945
Category
cs.AI: Artificial Intelligence
Cross-listed
cs.LO,
cs.PL
Citations
10
Venue
Conference On Spatial Information Theory
Last Checked
4 months ago
Abstract
Declarative spatial reasoning denotes the ability to (declaratively) 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.
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