Saved in:
Bibliographic Details
Main Authors: Feng, Chao, Grubl, Thomas, von der Assen, Jan, Hunkeler, Sandrin Raphael, Spitz, Linn Anna, Bovet, Gerome, Stiller, Burkhard
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2602.21343
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866914349853966336
author Feng, Chao
Grubl, Thomas
von der Assen, Jan
Hunkeler, Sandrin Raphael
Spitz, Linn Anna
Bovet, Gerome
Stiller, Burkhard
author_facet Feng, Chao
Grubl, Thomas
von der Assen, Jan
Hunkeler, Sandrin Raphael
Spitz, Linn Anna
Bovet, Gerome
Stiller, Burkhard
contents Decentralized Federated Learning (DFL) eliminates the need for a central aggregator, but it can expose communication patterns that reveal participant identities. This work presents UnlinkableDFL, a DFL framework that combines a peer-based mixnet with fragment-based model aggregation to ensure unlinkability in fully decentralized settings. Model updates are divided into encrypted fragments, sent over separate multi-hop paths, and aggregated without using any identity information. A theoretical analysis indicates that relay and end-to-end unlinkability improve with larger mixing sets and longer paths, while convergence remains similar to standard FedAvg. A prototype implementation evaluates learning performance, latency, unlinkability, and resource usage. The results show that UnlinkableDFL converges reliably and adapts to node churn. Communication latency emerges as the main overhead, while memory and CPU usage stay moderate. These findings illustrate the balance between anonymity and system efficiency, demonstrating that strong unlinkability can be maintained in decentralized learning workflows.
format Preprint
id arxiv_https___arxiv_org_abs_2602_21343
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle UnlinkableDFL: a Practical Mixnet Protocol for Churn-Tolerant Decentralized FL Model Sharing
Feng, Chao
Grubl, Thomas
von der Assen, Jan
Hunkeler, Sandrin Raphael
Spitz, Linn Anna
Bovet, Gerome
Stiller, Burkhard
Networking and Internet Architecture
Decentralized Federated Learning (DFL) eliminates the need for a central aggregator, but it can expose communication patterns that reveal participant identities. This work presents UnlinkableDFL, a DFL framework that combines a peer-based mixnet with fragment-based model aggregation to ensure unlinkability in fully decentralized settings. Model updates are divided into encrypted fragments, sent over separate multi-hop paths, and aggregated without using any identity information. A theoretical analysis indicates that relay and end-to-end unlinkability improve with larger mixing sets and longer paths, while convergence remains similar to standard FedAvg. A prototype implementation evaluates learning performance, latency, unlinkability, and resource usage. The results show that UnlinkableDFL converges reliably and adapts to node churn. Communication latency emerges as the main overhead, while memory and CPU usage stay moderate. These findings illustrate the balance between anonymity and system efficiency, demonstrating that strong unlinkability can be maintained in decentralized learning workflows.
title UnlinkableDFL: a Practical Mixnet Protocol for Churn-Tolerant Decentralized FL Model Sharing
topic Networking and Internet Architecture
url https://arxiv.org/abs/2602.21343