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Pregled bibliografske jedinice broj: 1210594

Framework for Federated Learning Open Models in e Government Applications


Guberović, Emanuel; Alexopoulos, Charalampos; Bosnić, Ivana; Čavrak, Igor
Framework for Federated Learning Open Models in e Government Applications // Interdisciplinary description of complex systems, 20 (2022), 2; 162-178 doi:10.7906/indecs.20.2.8 (međunarodna recenzija, članak, znanstveni)


CROSBI ID: 1210594 Za ispravke kontaktirajte CROSBI podršku putem web obrasca

Naslov
Framework for Federated Learning Open Models in e Government Applications

Autori
Guberović, Emanuel ; Alexopoulos, Charalampos ; Bosnić, Ivana ; Čavrak, Igor

Izvornik
Interdisciplinary description of complex systems (1334-4684) 20 (2022), 2; 162-178

Vrsta, podvrsta i kategorija rada
Radovi u časopisima, članak, znanstveni

Ključne riječi
e-Government, open data, machine learning, federated learning open model

Sažetak
Using open data and artificial intelligence in providing innovative public services is the focus of the third generation of e-Government and supporting Internet and Communication Technologies systems. However, developing applications and offering open services based on (open) machine learning models requires large volumes of private, open, or a combination of both open and private data for model training to achieve sufficient model quality. Therefore, it would be beneficial to use both open and private data simultaneously to fully use the potential that machine learning could grant to the public and private sectors. Federated learning, as a machine learning technique, enables collaborative learning among different parties and their data, being private or open, creating shared knowledge by training models on such partitioned data without sharing it between parties in any step of the training or inference process. This paper provides a practical layout for developing and sharing machine learning models in a federative and open manner called Federated Learning Open Model. The definition of the Federated Learning Open Model concept is followed by a description of two potential use cases and services achieved with its usage, one being from the agricultural sector with the horizontal dataset partitioning and the latter being from the financial sector with a dataset partitioned vertically.

Izvorni jezik
Engleski

Znanstvena područja
Računarstvo



POVEZANOST RADA


Projekti:
EK-H2020-857592 - Twinning koordinacijska akcija u području otvorenih podataka (TODO) (Musa, Anamarija; Tutić, Dražen; Vujić, Miroslav; Čavrak, Igor; Žajdela Hrustek, Nikolina; Kuveždić Divjak, Ana; Šalamon, Dragica, EK ) ( CroRIS)

Profili:

Avatar Url Igor Čavrak (autor)

Avatar Url Emanuel Guberović (autor)

Avatar Url Ivana Bosnić (autor)

Poveznice na cjeloviti tekst rada:

doi indecs.eu

Citiraj ovu publikaciju:

Guberović, Emanuel; Alexopoulos, Charalampos; Bosnić, Ivana; Čavrak, Igor
Framework for Federated Learning Open Models in e Government Applications // Interdisciplinary description of complex systems, 20 (2022), 2; 162-178 doi:10.7906/indecs.20.2.8 (međunarodna recenzija, članak, znanstveni)
Guberović, E., Alexopoulos, C., Bosnić, I. & Čavrak, I. (2022) Framework for Federated Learning Open Models in e Government Applications. Interdisciplinary description of complex systems, 20 (2), 162-178 doi:10.7906/indecs.20.2.8.
@article{article, author = {Guberovi\'{c}, Emanuel and Alexopoulos, Charalampos and Bosni\'{c}, Ivana and \v{C}avrak, Igor}, year = {2022}, pages = {162-178}, DOI = {10.7906/indecs.20.2.8}, keywords = {e-Government, open data, machine learning, federated learning open model}, journal = {Interdisciplinary description of complex systems}, doi = {10.7906/indecs.20.2.8}, volume = {20}, number = {2}, issn = {1334-4684}, title = {Framework for Federated Learning Open Models in e Government Applications}, keyword = {e-Government, open data, machine learning, federated learning open model} }
@article{article, author = {Guberovi\'{c}, Emanuel and Alexopoulos, Charalampos and Bosni\'{c}, Ivana and \v{C}avrak, Igor}, year = {2022}, pages = {162-178}, DOI = {10.7906/indecs.20.2.8}, keywords = {e-Government, open data, machine learning, federated learning open model}, journal = {Interdisciplinary description of complex systems}, doi = {10.7906/indecs.20.2.8}, volume = {20}, number = {2}, issn = {1334-4684}, title = {Framework for Federated Learning Open Models in e Government Applications}, keyword = {e-Government, open data, machine learning, federated learning open model} }

Časopis indeksira:


  • Web of Science Core Collection (WoSCC)
    • Emerging Sources Citation Index (ESCI)


Citati:





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