FedCLF -- Towards Efficient Participant Selection for Federated Learning in Heterogeneous IoV Networks
- URL: http://arxiv.org/abs/2509.25233v2
- Date: Wed, 29 Oct 2025 03:27:25 GMT
- Title: FedCLF -- Towards Efficient Participant Selection for Federated Learning in Heterogeneous IoV Networks
- Authors: Kasun Eranda Wijethilake, Adnan Mahmood, Quan Z. Sheng,
- Abstract summary: Federated Learning (FL) is a distributed machine learning technique that preserves data privacy by sharing only the trained parameters instead of the client data.<n>We propose FedCLF with Calibrated Loss and Feedback control, which introduces calibrated loss as a utility in the participant selection process and a feedback control mechanism to dynamically adjust the sampling frequency of the clients.
- Score: 11.632031365965878
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Federated Learning (FL) is a distributed machine learning technique that preserves data privacy by sharing only the trained parameters instead of the client data. This makes FL ideal for highly dynamic, heterogeneous, and time-critical applications, in particular, the Internet of Vehicles (IoV) networks. However, FL encounters considerable challenges in such networks owing to the high data and device heterogeneity. To address these challenges, we propose FedCLF, i.e., FL with Calibrated Loss and Feedback control, which introduces calibrated loss as a utility in the participant selection process and a feedback control mechanism to dynamically adjust the sampling frequency of the clients. The envisaged approach (a) enhances the overall model accuracy in case of highly heterogeneous data and (b) optimizes the resource utilization for resource constrained IoV networks, thereby leading to increased efficiency in the FL process. We evaluated FedCLF vis-\`a-vis baseline models, i.e., FedAvg, Newt, and Oort, using CIFAR-10 dataset with varying data heterogeneity. Our results depict that FedCLF significantly outperforms the baseline models by up to a 16% improvement in high data heterogeneity-related scenarios with improved efficiency via reduced sampling frequency.
Related papers
- Adaptive Dual-Weighting Framework for Federated Learning via Out-of-Distribution Detection [53.45696787935487]
Federated Learning (FL) enables collaborative model training across large-scale distributed service nodes.<n>In real-world service-oriented deployments, data generated by heterogeneous users, devices, and application scenarios are inherently non-IID.<n>We propose FLood, a novel FL framework inspired by out-of-distribution (OOD) detection.
arXiv Detail & Related papers (2026-02-01T05:54:59Z) - Efficient Federated Learning with Heterogeneous Data and Adaptive Dropout [62.73150122809138]
Federated Learning (FL) is a promising distributed machine learning approach that enables collaborative training of a global model using multiple edge devices.<n>We propose the FedDHAD FL framework, which comes with two novel methods: Dynamic Heterogeneous model aggregation (FedDH) and Adaptive Dropout (FedAD)<n>The combination of these two methods makes FedDHAD significantly outperform state-of-the-art solutions in terms of accuracy (up to 6.7% higher), efficiency (up to 2.02 times faster), and cost (up to 15.0% smaller)
arXiv Detail & Related papers (2025-07-14T16:19:00Z) - FlexFed: Mitigating Catastrophic Forgetting in Heterogeneous Federated Learning in Pervasive Computing Environments [4.358456799125694]
Pervasive computing environments (e.g., for Human Activity Recognition, HAR) are characterized by resource-constrained end devices, streaming sensor data and intermittent client participation.<n>We propose FlexFed, a novel FL approach that prioritizes data retention for efficient memory use and dynamically adjusts offline training frequency.<n>We also develop a realistic HAR-based evaluation framework that simulates streaming data, dynamic distributions, imbalances and varying availability.
arXiv Detail & Related papers (2025-05-19T14:23:37Z) - Over-the-Air Fair Federated Learning via Multi-Objective Optimization [52.295563400314094]
We propose an over-the-air fair federated learning algorithm (OTA-FFL) to train fair FL models.<n>Experiments demonstrate the superiority of OTA-FFL in achieving fairness and robust performance.
arXiv Detail & Related papers (2025-01-06T21:16:51Z) - Learn More by Using Less: Distributed Learning with Energy-Constrained Devices [3.730504020733928]
Federated Learning (FL) has emerged as a solution for distributed model training across decentralized, privacy-preserving devices.<n>We propose LeanFed, an energy-aware FL framework designed to optimize client selection and training workloads on battery-constrained devices.
arXiv Detail & Related papers (2024-12-03T09:06:57Z) - Client Contribution Normalization for Enhanced Federated Learning [4.726250115737579]
Mobile devices, including smartphones and laptops, generate decentralized and heterogeneous data.
Federated Learning (FL) offers a promising alternative by enabling collaborative training of a global model across decentralized devices without data sharing.
This paper focuses on data-dependent heterogeneity in FL and proposes a novel approach leveraging mean latent representations extracted from locally trained models.
arXiv Detail & Related papers (2024-11-10T04:03:09Z) - Towards Resource-Efficient Federated Learning in Industrial IoT for Multivariate Time Series Analysis [50.18156030818883]
Anomaly and missing data constitute a thorny problem in industrial applications.
Deep learning enabled anomaly detection has emerged as a critical direction.
The data collected in edge devices contain user privacy.
arXiv Detail & Related papers (2024-11-06T15:38:31Z) - An Aggregation-Free Federated Learning for Tackling Data Heterogeneity [50.44021981013037]
Federated Learning (FL) relies on the effectiveness of utilizing knowledge from distributed datasets.
Traditional FL methods adopt an aggregate-then-adapt framework, where clients update local models based on a global model aggregated by the server from the previous training round.
We introduce FedAF, a novel aggregation-free FL algorithm.
arXiv Detail & Related papers (2024-04-29T05:55:23Z) - DYNAMITE: Dynamic Interplay of Mini-Batch Size and Aggregation Frequency
for Federated Learning with Static and Streaming Dataset [23.11152686493894]
Federated Learning (FL) is a distributed learning paradigm that can coordinate heterogeneous edge devices to perform model training without sharing private data.
This paper introduces novel analytical models and optimization algorithms that leverage the interplay between batch size and aggregation frequency to navigate the trade-offs among convergence, cost, and completion time for dynamic FL training.
arXiv Detail & Related papers (2023-10-20T08:36:12Z) - Analysis and Optimization of Wireless Federated Learning with Data
Heterogeneity [72.85248553787538]
This paper focuses on performance analysis and optimization for wireless FL, considering data heterogeneity, combined with wireless resource allocation.
We formulate the loss function minimization problem, under constraints on long-term energy consumption and latency, and jointly optimize client scheduling, resource allocation, and the number of local training epochs (CRE)
Experiments on real-world datasets demonstrate that the proposed algorithm outperforms other benchmarks in terms of the learning accuracy and energy consumption.
arXiv Detail & Related papers (2023-08-04T04:18:01Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.