Federated Learning (FL) stands as a framework facilitating geographically distributed clients to collaboratively learn machine learning models without divulging their local data. This thesis focuses on addressing heterogeneity, a major challenge in FL. Heterogeneity manifests in variations across clients' local datasets (statistical...
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December 7, 2023 (v1)PublicationUploaded on: March 13, 2024
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July 17, 2022 (v1)Conference paper
Federated learning allows clients to collaboratively learn statistical models while keeping their data local. Federated learning was originally used to train a unique global model to be served to all clients, but this approach might be sub-optimal when clients' local data distributions are heterogeneous. In order to tackle this limitation,...
Uploaded on: December 3, 2022 -
December 6, 2020 (v1)Conference paper
Federated learning usually employs a client-server architecture where an orchestrator iteratively aggregates model updates from remote clients and pushes them back a refined model. This approach may be inefficient in cross-silo settings, as close-by data silos with high-speed access links may exchange information faster than with the...
Uploaded on: December 4, 2022 -
April 25, 2023 (v1)Conference paper
Federated learning (FL) is an effective solution to train machine learning models on the increasing amount of data generated by IoT devices and smartphones while keeping such data localized. Most previous work on federated learning assumes that clients operate on static datasets collected before training starts. This approach may be inefficient...
Uploaded on: January 13, 2024 -
December 6, 2021 (v1)Conference paper
The increasing size of data generated by smartphones and IoT devices motivated the development of Federated Learning (FL), a framework for on-device collaborative training of machine learning models. First efforts in FL focused on learning a single global model with good average performance across clients, but the global model may be...
Uploaded on: December 3, 2022 -
2023 (v1)Journal article
In Federated Learning (FL), devices-also referred to as clients-can exhibit heterogeneous availability patterns, often correlated over time and with other clients. This paper addresses the problem of heterogeneous and correlated client availability in FL. Our theoretical analysis is the first to demonstrate the negative impact of correlation on...
Uploaded on: December 29, 2023 -
May 17, 2023 (v1)Conference paper
The enormous amount of data produced by mobile and IoT devices has motivated the development of federated learning (FL), a framework allowing such devices (or clients) to collaboratively train machine learning models without sharing their local data. FL algorithms (like FedAvg) iteratively aggregate model updates computed by clients on their...
Uploaded on: December 29, 2023 -
November 20, 2024 (v1)Publication
Federated Learning (FL) enables multiple clients, such as mobile phones and IoT devices, to collaboratively train a global machine learning model while keeping their data localized. However, recent studies have revealed that the training phase of FL is vulnerable to reconstruction attacks, such as attribute inference attacks (AIA), where...
Uploaded on: January 13, 2025 -
July 15, 2024 (v1)Conference paper
Within the realm of privacy-preserving machine learning, empirical privacy defenses have been proposed as a solution to achieve satisfactory levels of training data privacy without a significant drop in model utility. Most existing defenses against membership inference attacks assume access to reference data, defined as an additional dataset...
Uploaded on: November 5, 2024 -
February 25, 2025 (v1)Conference paper
Federated Learning (FL) enables multiple clients, such as mobile phones and IoT devices, to collaboratively train a global machine learning model while keeping their data localized. However, recent studies have revealed that the training phase of FL is vulnerable to reconstruction attacks, such as attribute inference attacks (AIA), where...
Uploaded on: January 13, 2025 -
November 28, 2022 (v1)Conference paper
Federated Learning (FL) is a novel approach enabling several clients holding sensitive data to collaboratively train machine learning models, without centralizing data. The cross-silo FL setting corresponds to the case of few ($2$--$50$) reliable clients, each holding medium to large datasets, and is typically found in applications such as...
Uploaded on: February 22, 2023