An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics

In a continuously evolving environment, organizations, including public administrations, need to quickly adapt to change and make decisions in real-time. This requires having a real-time understanding of their context that can be achieved by adopting an event-native mindset in data management which...

Full description

Bibliographic Details
Main Authors: Dimitris Zeginis, Konstantinos Tarabanis
Format: Article
Language:English
Published: MDPI AG 2024-01-01
Series:Computers
Subjects:
Online Access:https://www.mdpi.com/2073-431X/13/1/17
_version_ 1797344375629414400
author Dimitris Zeginis
Konstantinos Tarabanis
author_facet Dimitris Zeginis
Konstantinos Tarabanis
author_sort Dimitris Zeginis
collection DOAJ
description In a continuously evolving environment, organizations, including public administrations, need to quickly adapt to change and make decisions in real-time. This requires having a real-time understanding of their context that can be achieved by adopting an event-native mindset in data management which focuses on the dynamics of change compared to the state-based traditional approaches. In this context, this paper proposes the adoption of an event-centric knowledge graph approach for the holistic data management of all data repositories in public administration. Towards this direction, the paper proposes an event-centric knowledge graph model for the domain of public administration that captures these dynamics considering events as first-class entities for knowledge representation. The development of the model is based on a state-of-the-art analysis of existing event-centric knowledge graph models that led to the identification of core concepts related to event representation, on a state-of-the-art analysis of existing public administration models that identified the core entities of the domain, and on a theoretical analysis of concepts related to events, public services, and effective public administration in order to outline the context and identify the domain-specific needs for event modeling. Further, the paper applies the model in the context of Greek public administration in order to validate it and showcase the possibilities that arise. The results show that the adoption of event-centric knowledge graph approaches for data management in public administration can facilitate data analytics, continuous integration, and the provision of a 360-degree-view of end-users. We anticipate that the proposed approach will also facilitate real-time decision-making, continuous intelligence, and ubiquitous AI.
first_indexed 2024-03-08T11:01:29Z
format Article
id doaj.art-c7f0fcc652ba4d47a1f85a9590577982
institution Directory Open Access Journal
issn 2073-431X
language English
last_indexed 2024-03-08T11:01:29Z
publishDate 2024-01-01
publisher MDPI AG
record_format Article
series Computers
spelling doaj.art-c7f0fcc652ba4d47a1f85a95905779822024-01-26T15:52:42ZengMDPI AGComputers2073-431X2024-01-011311710.3390/computers13010017An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data AnalyticsDimitris Zeginis0Konstantinos Tarabanis1Department of Business Administration, University of Macedonia, 54636 Thessaloniki, GreeceDepartment of Business Administration, University of Macedonia, 54636 Thessaloniki, GreeceIn a continuously evolving environment, organizations, including public administrations, need to quickly adapt to change and make decisions in real-time. This requires having a real-time understanding of their context that can be achieved by adopting an event-native mindset in data management which focuses on the dynamics of change compared to the state-based traditional approaches. In this context, this paper proposes the adoption of an event-centric knowledge graph approach for the holistic data management of all data repositories in public administration. Towards this direction, the paper proposes an event-centric knowledge graph model for the domain of public administration that captures these dynamics considering events as first-class entities for knowledge representation. The development of the model is based on a state-of-the-art analysis of existing event-centric knowledge graph models that led to the identification of core concepts related to event representation, on a state-of-the-art analysis of existing public administration models that identified the core entities of the domain, and on a theoretical analysis of concepts related to events, public services, and effective public administration in order to outline the context and identify the domain-specific needs for event modeling. Further, the paper applies the model in the context of Greek public administration in order to validate it and showcase the possibilities that arise. The results show that the adoption of event-centric knowledge graph approaches for data management in public administration can facilitate data analytics, continuous integration, and the provision of a 360-degree-view of end-users. We anticipate that the proposed approach will also facilitate real-time decision-making, continuous intelligence, and ubiquitous AI.https://www.mdpi.com/2073-431X/13/1/17continuous intelligencedata analyticsevent-centricknowledge graphspublic administration
spellingShingle Dimitris Zeginis
Konstantinos Tarabanis
An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
Computers
continuous intelligence
data analytics
event-centric
knowledge graphs
public administration
title An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
title_full An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
title_fullStr An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
title_full_unstemmed An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
title_short An Event-Centric Knowledge Graph Approach for Public Administration as an Enabler for Data Analytics
title_sort event centric knowledge graph approach for public administration as an enabler for data analytics
topic continuous intelligence
data analytics
event-centric
knowledge graphs
public administration
url https://www.mdpi.com/2073-431X/13/1/17
work_keys_str_mv AT dimitriszeginis aneventcentricknowledgegraphapproachforpublicadministrationasanenablerfordataanalytics
AT konstantinostarabanis aneventcentricknowledgegraphapproachforpublicadministrationasanenablerfordataanalytics
AT dimitriszeginis eventcentricknowledgegraphapproachforpublicadministrationasanenablerfordataanalytics
AT konstantinostarabanis eventcentricknowledgegraphapproachforpublicadministrationasanenablerfordataanalytics