combine@alvar.ug

A Pattern Driven Approach to Knowledge Representation in the Disaster Domain

A Pattern Driven Approach to Knowledge Representation in the Disaster Domain

Show simple record

dc.contributor.author Allan Mazimwe
dc.contributor.author Imed Hammouda
dc.contributor.author Anthony Gidudu
dc.contributor.author Bernard Barasa
dc.date.accessioned 2021-01-10T11:55:34Z
dc.date.available 2021-01-10T11:55:34Z
dc.date.issued 2020
dc.identifier.issn 2662995x
dc.identifier.issn 26618907
dc.identifier.uri https://combine.alvar.ug/handle/1/48960
dc.description.abstract Access to integrated disaster-related data through querying is still a problem due to associated semantic barriers. The disaster domain largely relies on the top–down approach of ontology development. This limits reuse due to associated commitments and complex alignments within ontologies. Therefore, there is a need to utilize a bottom-up approach that reuses patterns for representing disaster knowledge. To bridge the availability gap of patterns for representing disaster knowledge, this study identifies existing and emerging patterns for reuse while organizing disaster data from multiple sector stakeholders. Based on the eXtreme Design (XD) methodology and key informant interviews, competency questions (CQs) were elicited from domain stakeholders. The CQs are matched with existing patterns from other contexts. Emerging patterns (e.g the Event Classification and Quality Dependence Description for Objects) are also developed for CQs not captured and subsequently tested using SPARQL queries characterising the CQs. It is in this context that this paper presents a characterisation of disaster risk knowledge using CQs and corresponding patterns (reusable and emerging) covering the knowledge. Accordingly, we illustrate a pattern-driven use case to organise drought hazard data for early warning purposes. This provides a powerful use case for adopting a pattern-based approach to knowledge representation in the disaster domain.
dc.publisher Springer Science and Business Media LLC
dc.relation.ispartof SN Computer Science
dc.title A Pattern Driven Approach to Knowledge Representation in the Disaster Domain
dc.type journal article
dc.identifier.doi 10.1007/s42979-020-00342-5
dc.identifier.mag 3093780406
dc.identifier.lens 005-735-366-814-121
dc.identifier.volume 1
dc.identifier.issue 6
dc.identifier.spage 1
dc.identifier.epage 17
dc.subject.lens-fields Competence (human resources)
dc.subject.lens-fields Knowledge representation and reasoning
dc.subject.lens-fields Ontology (information science)
dc.subject.lens-fields Reuse
dc.subject.lens-fields Data science
dc.subject.lens-fields Ontology
dc.subject.lens-fields Warning system
dc.subject.lens-fields Key informants
dc.subject.lens-fields Computer science
dc.subject.lens-fields SPARQL


This record appears in the collections of the following institution(s)

Show simple record

Search Entire Database


Browse

My Account