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An Ontological Approach to Analysing Social Service Provisioning

2022-06-20 12:29:12
Mark S. Fox, Bart Gajderowicz, Daniela Rosu, Alina Turner, Lester Lyu

Abstract

This paper introduces ontological concepts required to evaluate and manage the coverage of social services in a Smart City context. Here, we focus on the perspective of key stakeholders, namely social purpose organizations and the clients they serve. The Compass ontology presented here extends the Common Impact Data Standard by introducing new concepts related to key dimensions: the who (Stakeholder), the what (Need, Need Satisfier, Outcome), the how (Service, Event), and the contributions (tracking resources). The paper first introduces key stakeholders, services, outcomes, events, needs and need satisfiers, along with their definitions. Second, a subset of competency questions are presented to illustrate the types of questions key stakeholders have posed. Third, the extension's ability to answer questions is evaluated by presenting SPARQL queries executed on a Compass-based knowledge graph and analysing their results.

Abstract (translated)

URL

https://arxiv.org/abs/2206.11061

PDF

https://arxiv.org/pdf/2206.11061.pdf


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