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Main Authors: Zhang, Yuanqiao, He, Tiantian, Gao, Yuan, Wang, Yixin, Ong, Yew-Soon, Gong, Maoguo, Qin, A. K., Li, Hui
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.28316
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author Zhang, Yuanqiao
He, Tiantian
Gao, Yuan
Wang, Yixin
Ong, Yew-Soon
Gong, Maoguo
Qin, A. K.
Li, Hui
author_facet Zhang, Yuanqiao
He, Tiantian
Gao, Yuan
Wang, Yixin
Ong, Yew-Soon
Gong, Maoguo
Qin, A. K.
Li, Hui
contents In this paper, we present Federated Robust Curvature Optimization (FedRCO), a novel second-order optimization framework designed to improve convergence speed and reduce communication cost in Federated Learning systems under statistical heterogeneity. Existing second-order optimization methods are often computationally expensive and numerically unstable in distributed settings. In contrast, FedRCO addresses these challenges by integrating an efficient approximate curvature optimizer with a provable stability mechanism. Specifically, FedRCO incorporates three key components: (1) a Gradient Anomaly Monitor that detects and mitigates exploding gradients in real-time, (2) a Fail-Safe Resilience protocol that resets optimization states upon numerical instability, and (3) a Curvature-Preserving Adaptive Aggregation strategy that safely integrates global knowledge without erasing the local curvature geometry. Theoretical analysis shows that FedRCO can effectively mitigate instability and prevent unbounded updates while preserving optimization efficiency. Extensive experiments show that FedRCO achieves superior robustness against diverse non-IID scenarios while achieving higher accuracy and faster convergence than both state-of-the-art first-order and second-order methods.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28316
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Taming the Instability: A Robust Second-Order Optimizer for Federated Learning over Non-IID Data
Zhang, Yuanqiao
He, Tiantian
Gao, Yuan
Wang, Yixin
Ong, Yew-Soon
Gong, Maoguo
Qin, A. K.
Li, Hui
Machine Learning
In this paper, we present Federated Robust Curvature Optimization (FedRCO), a novel second-order optimization framework designed to improve convergence speed and reduce communication cost in Federated Learning systems under statistical heterogeneity. Existing second-order optimization methods are often computationally expensive and numerically unstable in distributed settings. In contrast, FedRCO addresses these challenges by integrating an efficient approximate curvature optimizer with a provable stability mechanism. Specifically, FedRCO incorporates three key components: (1) a Gradient Anomaly Monitor that detects and mitigates exploding gradients in real-time, (2) a Fail-Safe Resilience protocol that resets optimization states upon numerical instability, and (3) a Curvature-Preserving Adaptive Aggregation strategy that safely integrates global knowledge without erasing the local curvature geometry. Theoretical analysis shows that FedRCO can effectively mitigate instability and prevent unbounded updates while preserving optimization efficiency. Extensive experiments show that FedRCO achieves superior robustness against diverse non-IID scenarios while achieving higher accuracy and faster convergence than both state-of-the-art first-order and second-order methods.
title Taming the Instability: A Robust Second-Order Optimizer for Federated Learning over Non-IID Data
topic Machine Learning
url https://arxiv.org/abs/2603.28316