Efficiently Characterizing Non-Redundant Constraints in Large Real World Qualitative Spatial Networks
Abstract
RCC8 is a constraint language that serves for qualitative spatial representation and reasoning by encoding the topological relations between spatial entities. We focus on efficiently characterizing non-redundant constraints in large real world RCC8 networks and obtaining their prime networks. For a RCC8 network N a constraint is redundant, if removing that constraint from N does not change the solution set of N. A prime network of N is a network which contains no redundant constraints, but has the same solution set as N. We make use of a particular partial consistency, namely, G-path consistency, and obtain new complexity results for various cases of RCC8 networks, while we also show that given a maximal distributive subclass for RCC8 and a network N defined on that subclass, the prunning capacity of G-path consistency and path consistency is identical on the common edges of G and the complete graph of N, when G is a triangulation of the constraint graph of N. Finally, we devise an algorithm based on G-path consistency to compute the unique prime network of a RCC8 network, and show that it significantly progresses the state-of-the-art for practical reasoning with real RCC8 networks scaling up to millions of nodes.
Cite
Text
Sioutis et al. "Efficiently Characterizing Non-Redundant Constraints in Large Real World Qualitative Spatial Networks." International Joint Conference on Artificial Intelligence, 2015.Markdown
[Sioutis et al. "Efficiently Characterizing Non-Redundant Constraints in Large Real World Qualitative Spatial Networks." International Joint Conference on Artificial Intelligence, 2015.](https://mlanthology.org/ijcai/2015/sioutis2015ijcai-efficiently/)BibTeX
@inproceedings{sioutis2015ijcai-efficiently,
title = {{Efficiently Characterizing Non-Redundant Constraints in Large Real World Qualitative Spatial Networks}},
author = {Sioutis, Michael and Li, Sanjiang and Condotta, Jean-François},
booktitle = {International Joint Conference on Artificial Intelligence},
year = {2015},
pages = {3229-3235},
url = {https://mlanthology.org/ijcai/2015/sioutis2015ijcai-efficiently/}
}