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<div class="csl-entry">Melnychyn, O. (2026). <i>Federated Learning in Edge Computing Settings in the Medical Domain</i> [Diploma Thesis, Technische Universität Wien]. reposiTUm. https://doi.org/10.34726/hss.2026.129963</div>
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dc.identifier.uri
https://doi.org/10.34726/hss.2026.129963
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dc.identifier.uri
http://hdl.handle.net/20.500.12708/228006
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dc.description
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüft
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dc.description.abstract
In the current rapid pace of digitalization, the volume of personal medical data also increases, raising additional privacy and security concerns. A large amount of this sensitive data is stored on mobile devices and often unavailable for collection due to different regulations, such as the GDPR, as well as users’ reluctance to share. Federated Learning (FL) has emerged as a way to train a model in a decentralized manner without sharing raw data. However, in edge computing settings, FL faces major challenges of data heterogeneity and scarcity.This work explores the ability to train a model in an extreme FL setting, namely Single- Record Per-Client FL (SRPC FL), where each participant’s local dataset comprises one record. Such a scenario reflects eHealth applications like remote patient monitoring, fitness tracking, and personalized treatment support, where local data is highly individual and not representative of the global distribution. In our work, we empirically evaluate standard FL strategies for obtaining a global model, such as (FedAvg, FedProx), adaptive optimization methods (FedAdam, FedAdagrad), and clustering-based approaches (CFL, IFCA) in SRPC FL and compare them with models trained in centralized settings. Additionally, we propose clustering and weighting methods that tackle the challenges of this setup. Finally, we provide an extensive analysis of the robustness of the baseline and the proposed methods in SRPC FL conditions under different label skews in the global dataset.
en
dc.language
English
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dc.language.iso
en
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dc.rights.uri
http://rightsstatements.org/vocab/InC/1.0/
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dc.subject
federated learning
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dc.subject
machine learning
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dc.subject
privacy-preserving machine learning
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dc.subject
edge computing
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dc.subject
data heterogeneity
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dc.subject
decentralized machine learning
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dc.title
Federated Learning in Edge Computing Settings in the Medical Domain
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dc.title.alternative
Federated Learning in Edge Computing Settings im Medizinischen Bereich
de
dc.type
Thesis
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dc.type
Hochschulschrift
de
dc.rights.license
In Copyright
en
dc.rights.license
Urheberrechtsschutz
de
dc.identifier.doi
10.34726/hss.2026.129963
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dc.contributor.affiliation
TU Wien, Österreich
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dc.rights.holder
Olesia Melnychyn
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dc.publisher.place
Wien
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tuw.version
vor
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tuw.thesisinformation
Technische Universität Wien
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dc.contributor.assistant
Mayer, Rudolf
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tuw.publication.orgunit
E194 - Institut für Information Systems Engineering