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Bibliographic Details
Main Authors: Kabgere, Chethana Prasad, S, Shylaja S
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.13460
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author Kabgere, Chethana Prasad
S, Shylaja S
author_facet Kabgere, Chethana Prasad
S, Shylaja S
contents Federated Learning (FL) enables decentralized model training without sharing raw data, but model weight distortion remains a major challenge in resource constrained IoT networks. In multi tier Federated IoT (Fed-IoT) systems, unstable connectivity and adversarial interference can silently alter transmitted parameters, degrading convergence. We propose DP-EMAR, a differentially private, error model based autonomous repair framework that detects and reconstructs transmission induced distortions during FL aggregation. DP-EMAR estimates corruption patterns and applies adaptive correction before privacy noise is added, enabling reliable in network repair without violating confidentiality. By integrating Differential Privacy (DP) with Secure Aggregation (SA), the framework distinguishes DP noise from genuine transmission errors. Experiments on heterogeneous IoT sensor and graph datasets show that DP-EMAR preserves convergence stability and maintains near baseline performance under communication corruption while ensuring strict (epsilon, delta)-DP guarantees. The framework enhances robustness, communication efficiency, and trust in privacy preserving Federated IoT learning.
format Preprint
id arxiv_https___arxiv_org_abs_2512_13460
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle DP-EMAR: A Differentially Private Framework for Autonomous Model Weight Repair in Federated IoT Systems
Kabgere, Chethana Prasad
S, Shylaja S
Machine Learning
Numerical Analysis
Federated Learning (FL) enables decentralized model training without sharing raw data, but model weight distortion remains a major challenge in resource constrained IoT networks. In multi tier Federated IoT (Fed-IoT) systems, unstable connectivity and adversarial interference can silently alter transmitted parameters, degrading convergence. We propose DP-EMAR, a differentially private, error model based autonomous repair framework that detects and reconstructs transmission induced distortions during FL aggregation. DP-EMAR estimates corruption patterns and applies adaptive correction before privacy noise is added, enabling reliable in network repair without violating confidentiality. By integrating Differential Privacy (DP) with Secure Aggregation (SA), the framework distinguishes DP noise from genuine transmission errors. Experiments on heterogeneous IoT sensor and graph datasets show that DP-EMAR preserves convergence stability and maintains near baseline performance under communication corruption while ensuring strict (epsilon, delta)-DP guarantees. The framework enhances robustness, communication efficiency, and trust in privacy preserving Federated IoT learning.
title DP-EMAR: A Differentially Private Framework for Autonomous Model Weight Repair in Federated IoT Systems
topic Machine Learning
Numerical Analysis
url https://arxiv.org/abs/2512.13460