Geospatial data is at the core of the Semantic Web, of which the largest knowledge base contains more than 30 billions facts. Reasoning on these large amounts of geospatial data requires efficient methods for the computation of links between the resources contained in these knowledge bases. In this paper, we present RADON - efficient solution for the discovery of topological relations between geospatial resources according to the DE9-IM standard. Our evaluation shows that we outperform the state of the art significantly and by several orders of magnitude.
%0 Conference Paper
%1 radon_2017
%A Sherif, Mohamed Ahmed
%A Dreßler, Kevin
%A Smeros, Panayiotis
%A Ngonga Ngomo, Axel-Cyrille
%B Proceedings of The Thirty-First AAAI Conference on Artificial Intelligence (AAAI-17)
%D 2017
%K DICE SIMBA bioasq geiser group_aksw hobbit kevin leds limes ngonga projecthobbit radon sherif
%T RADON - Rapid Discovery of Topological Relations
%U https://svn.aksw.org/papers/2017/AAAI_RADON/public.pdf
%X Geospatial data is at the core of the Semantic Web, of which the largest knowledge base contains more than 30 billions facts. Reasoning on these large amounts of geospatial data requires efficient methods for the computation of links between the resources contained in these knowledge bases. In this paper, we present RADON - efficient solution for the discovery of topological relations between geospatial resources according to the DE9-IM standard. Our evaluation shows that we outperform the state of the art significantly and by several orders of magnitude.
@inproceedings{radon_2017,
abstract = {Geospatial data is at the core of the Semantic Web, of which the largest knowledge base contains more than 30 billions facts. Reasoning on these large amounts of geospatial data requires efficient methods for the computation of links between the resources contained in these knowledge bases. In this paper, we present RADON - efficient solution for the discovery of topological relations between geospatial resources according to the DE9-IM standard. Our evaluation shows that we outperform the state of the art significantly and by several orders of magnitude.},
added-at = {2024-03-04T14:15:06.000+0100},
author = {Sherif, Mohamed Ahmed and Dre{\ss}ler, Kevin and Smeros, Panayiotis and {Ngonga Ngomo}, Axel-Cyrille},
biburl = {https://www.bibsonomy.org/bibtex/213218c1fc92557d9c259130fe32c4e49/aksw},
booktitle = {Proceedings of The Thirty-First AAAI Conference on Artificial Intelligence (AAAI-17)},
interhash = {2e350297ce53d3acd53387f9b1d7f05d},
intrahash = {13218c1fc92557d9c259130fe32c4e49},
keywords = {DICE SIMBA bioasq geiser group_aksw hobbit kevin leds limes ngonga projecthobbit radon sherif},
owner = {sherif},
timestamp = {2024-03-04T14:15:06.000+0100},
title = {{RADON} - {Rapid Discovery of Topological Relations}},
url = {https://svn.aksw.org/papers/2017/AAAI_RADON/public.pdf},
year = 2017
}