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Autori principali: Pérez-Corral, Cristian, Mestre, Jose I., Fernández-Hernández, Alberto, Dolz, Manuel F., Quitana-Ortí, Enrique S.
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2605.22266
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author Pérez-Corral, Cristian
Mestre, Jose I.
Fernández-Hernández, Alberto
Dolz, Manuel F.
Quitana-Ortí, Enrique S.
author_facet Pérez-Corral, Cristian
Mestre, Jose I.
Fernández-Hernández, Alberto
Dolz, Manuel F.
Quitana-Ortí, Enrique S.
contents Federated learning enables collaborative training across distributed clients with heterogeneous data, but such heterogeneity often leads to unstable updates and degraded global performance. Moreover, in practical deployments, client updates may deviate from the expected behavior not only due to benign not i.i.d. distributions, but also due to distributional shifts or anomalous inputs, raising concerns about the reliability of the aggregation process. In this work, we propose a lightweight geometric signal to quantify the functional deviation of a client with respect to the global model. Instead of comparing model parameters or gradients, our approach measures how the local training of each client alters the activation-induced partition of the input space, evaluated on a shared probe set. This yields a permutation-invariant, interpretable metric of client--global divergence that captures differences in how data is processed by the model. We show that this signal effectively identifies clients that induce atypical functional changes, distinguishing stable yet heterogeneous clients from those whose updates significantly diverge from the global regime. As a result, the proposed metric provides a simple tool for monitoring client behavior and enabling risk-aware aggregation strategies in federated learning systems.
format Preprint
id arxiv_https___arxiv_org_abs_2605_22266
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Detecting Atypical Clients in Federated Learning via Representation-Level Divergence
Pérez-Corral, Cristian
Mestre, Jose I.
Fernández-Hernández, Alberto
Dolz, Manuel F.
Quitana-Ortí, Enrique S.
Machine Learning
Artificial Intelligence
Federated learning enables collaborative training across distributed clients with heterogeneous data, but such heterogeneity often leads to unstable updates and degraded global performance. Moreover, in practical deployments, client updates may deviate from the expected behavior not only due to benign not i.i.d. distributions, but also due to distributional shifts or anomalous inputs, raising concerns about the reliability of the aggregation process. In this work, we propose a lightweight geometric signal to quantify the functional deviation of a client with respect to the global model. Instead of comparing model parameters or gradients, our approach measures how the local training of each client alters the activation-induced partition of the input space, evaluated on a shared probe set. This yields a permutation-invariant, interpretable metric of client--global divergence that captures differences in how data is processed by the model. We show that this signal effectively identifies clients that induce atypical functional changes, distinguishing stable yet heterogeneous clients from those whose updates significantly diverge from the global regime. As a result, the proposed metric provides a simple tool for monitoring client behavior and enabling risk-aware aggregation strategies in federated learning systems.
title Detecting Atypical Clients in Federated Learning via Representation-Level Divergence
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2605.22266