Semantic Rules for Context-Aware Geographical Information Retrieval

Keßler C, Raubal M, Wosniok C

Research article (book contribution) | Peer reviewed

Abstract

Geographical information retrieval (GIR) can benefit from context information to adapt the results to a user's current situation and personal preferences. In this respect, semantics-based GIR is especially challenging because context information { such as collected from sensors { is often provided through numeric values, which need to be mapped to ontological representations based on nominal symbols. The Web On- tology Language (OWL) lacks mathematical processing capabilities that require free variables, so that even basic comparisons and distance cal- culations are not possible. Therefore, the context information cannot be interpreted with respect to the task and the current user's preferences. In this paper, we introduce an approach based on semantic rules that adds these processing capabilities to OWL ontologies. The task of recommending personalized surf spots based on user location and preferences serves as a case study to evaluate the capabilities of semantic rules for context-aware geographical information retrieval. We demonstrate how the Semantic Web Rule Language (SWRL) can be utilized to model user preferences and how execution of the rules successfully retrieves surf spots that match these preferences. While SWRL itself enables free variables, mathematical functions are added via built-ins { external libraries that are dynamically loaded during rule execution. Utilizing the same mechanism, we demonstrate how SWRL built-ins can query the Seman- tic Sensor Web to enable the consideration of real-time measurements and thus make geographical information retrieval truly context-aware.

Details about the publication

Page range77-92
Publishing companySpringer VDI Verlag
Title of seriesLecture Notes in Computer Science
Volume of series5741
StatusPublished
Release year2009
Language in which the publication is writtenEnglish
Link to the full texthttp://carsten.io/Kessler-Raubal-Wosniok-2009-SemanticRulesforContext-AwareGeographicalInformationRetrieval.pdf

Authors from the University of Münster

Keßler, Carsten
Institute for Geoinformatics (ifgi)