IRMar 30, 2020

Concept-aware Geographic Information Retrieval

arXiv:2003.13481v110 citations
AI Analysis

This addresses retrieval challenges for users of geographic information systems, but it is incremental as it builds on existing semantic and ontological approaches.

The paper tackles the problem of vocabulary mismatch in geographic information retrieval by proposing a semantic concept identification model that integrates linguistic and encyclopedic knowledge, and tests show it provides accurate results.

Textual queries are largely employed in information retrieval to let users specify search goals in a natural way. However, differences in user and system terminologies can challenge the identification of the user's information needs, and thus the generation of relevant results. We argue that the explicit management of ontological knowledge, and of the meaning of concepts (by integrating linguistic and encyclopedic knowledge in the system ontology), can improve the analysis of search queries, because it enables a flexible identification of the topics the user is searching for, regardless of the adopted vocabulary. This paper proposes an information retrieval support model based on semantic concept identification. Starting from the recognition of the ontology concepts that the search query refers to, this model exploits the qualifiers specified in the query to select information items on the basis of possibly fine-grained features. Moreover, it supports query expansion and reformulation by suggesting the exploration of semantically similar concepts, as well as of concepts related to those referred in the query through thematic relations. A test on a data-set collected using the OnToMap Participatory GIS has shown that this approach provides accurate results.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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