Saved in:
Bibliographic Details
Main Authors: Díaz, Judith Sáinz-Pardo, García, Álvaro López
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2501.15949
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866912205550649344
author Díaz, Judith Sáinz-Pardo
García, Álvaro López
author_facet Díaz, Judith Sáinz-Pardo
García, Álvaro López
contents The development of deep learning techniques is a leading field applied to cases in which medical data is used, particularly in cases of image diagnosis. This type of data has privacy and legal restrictions that in many cases prevent it from being processed from central servers. However, in this area collaboration between different research centers, in order to create models as robust as possible, trained with the largest quantity and diversity of data available, is a critical point to be taken into account. In this sense, the application of privacy aware distributed architectures, such as federated learning arises. When applying this type of architecture, the server aggregates the different local models trained with the data of each data owner to build a global model. This point is critical and therefore it is fundamental to analyze different ways of aggregation according to the use case, taking into account the distribution of the clients, the characteristics of the model, etc. In this paper we propose a novel aggregation strategy and we apply it to a use case of cerebral magnetic resonance image classification. In this use case the aggregation function proposed manages to improve the convergence obtained over the rounds of the federated learning process in relation to different aggregation strategies classically implemented and applied.
format Preprint
id arxiv_https___arxiv_org_abs_2501_15949
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Enhancing the Convergence of Federated Learning Aggregation Strategies with Limited Data
Díaz, Judith Sáinz-Pardo
García, Álvaro López
Machine Learning
The development of deep learning techniques is a leading field applied to cases in which medical data is used, particularly in cases of image diagnosis. This type of data has privacy and legal restrictions that in many cases prevent it from being processed from central servers. However, in this area collaboration between different research centers, in order to create models as robust as possible, trained with the largest quantity and diversity of data available, is a critical point to be taken into account. In this sense, the application of privacy aware distributed architectures, such as federated learning arises. When applying this type of architecture, the server aggregates the different local models trained with the data of each data owner to build a global model. This point is critical and therefore it is fundamental to analyze different ways of aggregation according to the use case, taking into account the distribution of the clients, the characteristics of the model, etc. In this paper we propose a novel aggregation strategy and we apply it to a use case of cerebral magnetic resonance image classification. In this use case the aggregation function proposed manages to improve the convergence obtained over the rounds of the federated learning process in relation to different aggregation strategies classically implemented and applied.
title Enhancing the Convergence of Federated Learning Aggregation Strategies with Limited Data
topic Machine Learning
url https://arxiv.org/abs/2501.15949