Efficient Asynchronous Federated Evaluation with Strategy Similarity Awareness for Intent-Based Networking in Industrial Internet of Things
- URL: http://arxiv.org/abs/2512.20627v1
- Date: Fri, 28 Nov 2025 09:03:26 GMT
- Title: Efficient Asynchronous Federated Evaluation with Strategy Similarity Awareness for Intent-Based Networking in Industrial Internet of Things
- Authors: Shaowen Qin, Jianfeng Zeng, Haodong Guo, Xiaohuan Li, Jiawen Kang, Qian Chen, Dusit Niyato,
- Abstract summary: We propose FEIBN, a Federated Evaluation Enhanced Intent-Based Networking framework.<n>We show that SSAFL can improve model accuracy, accelerate model convergence, and reduce the cost by 27.8% with SemiAsyn.
- Score: 42.55497517367321
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Intent-Based Networking (IBN) offers a promising paradigm for intelligent and automated network control in Industrial Internet of Things (IIoT) environments by translating high-level user intents into executable network strategies. However, frequent strategy deployment and rollback are impractical in real-world IIoT systems due to tightly coupled workflows and high downtime costs, while the heterogeneity and privacy constraints of IIoT nodes further complicate centralized policy verification. To address these challenges, we propose FEIBN, a Federated Evaluation Enhanced Intent-Based Networking framework. FEIBN leverages large language models (LLMs) to align multimodal user intents into structured strategy tuples and employs federated learning to perform distributed policy verification across IIoT nodes without exposing raw data. To improve training efficiency and reduce communication overhead, we design SSAFL, a Strategy Similarity Aware Federated Learning mechanism that selects task-relevant nodes based on strategy similarity and resource status, and triggers asynchronous model uploads only when updates are significant. Experiments demonstrate that SSAFL can improve model accuracy, accelerate model convergence, and reduce the cost by 27.8% compared with SemiAsyn.
Related papers
- Multi-Agent Collaborative Intrusion Detection for Low-Altitude Economy IoT: An LLM-Enhanced Agentic AI Framework [60.72591149679355]
The rapid expansion of low-altitude economy Internet of Things (LAE-IoT) networks has created unprecedented security challenges.<n>Traditional intrusion detection systems fail to tackle the unique characteristics of aerial IoT environments.<n>We introduce a large language model (LLM)-enabled agentic AI framework for enhancing intrusion detection in LAE-IoT networks.
arXiv Detail & Related papers (2026-01-25T12:47:25Z) - Meta Hierarchical Reinforcement Learning for Scalable Resource Management in O-RAN [9.290879387995401]
This paper proposes an adaptive Meta Hierarchical Reinforcement Learning framework, inspired by Model Agnostic Meta Learning (MAML)<n>The framework integrates hierarchical control with meta learning to enable both global and local adaptation.<n>It achieves up to 40% faster adaptation and consistent fairness, latency, and throughput performance as network scale increases.
arXiv Detail & Related papers (2025-12-08T08:16:27Z) - Reinforcement Learning for Quantum Network Control with Application-Driven Objectives [53.03367590211247]
Dynamic programming and reinforcement learning offer promising tools for optimizing control strategies.<n>We propose a novel RL framework that directly optimize non-linear, differentiable objective functions.<n>Our work comprises the first step towards non-linear objective function optimization in quantum networks with RL, opening a path towards more advanced use cases.
arXiv Detail & Related papers (2025-09-12T18:41:10Z) - Power Grid Control with Graph-Based Distributed Reinforcement Learning [60.49805771047161]
This work advances a graph-based distributed reinforcement learning framework for real-time, scalable grid management.<n>A Graph Neural Network (GNN) is employed to encode the network's topological information within the single low-level agent's observation.<n>Experiments on the Grid2Op simulation environment show the effectiveness of the approach.
arXiv Detail & Related papers (2025-09-02T22:17:25Z) - Client Selection Strategies for Federated Semantic Communications in Heterogeneous IoT Networks [0.3683202928838613]
The exponential growth of IoT devices presents critical challenges in bandwidth-constrained wireless networks.<n>This paper presents a novel federated semantic communication framework that enables collaborative training of bandwidth-efficient models for image reconstruction.
arXiv Detail & Related papers (2025-06-20T15:11:20Z) - FedRTS: Federated Robust Pruning via Combinatorial Thompson Sampling [11.913924455236652]
Federated Learning (FL) enables collaborative model training across distributed clients without data sharing.<n>Current methods use dynamic pruning to improve efficiency by periodically adjusting sparse model topologies while maintaining sparsity.<n>We propose Federated Robust pruning via Thompson Sampling (FedRTS), a novel framework designed to develop robust sparse models.
arXiv Detail & Related papers (2025-01-31T13:26:22Z) - Decentralized Learning Strategies for Estimation Error Minimization with Graph Neural Networks [86.99017195607077]
We address the challenge of sampling and remote estimation for autoregressive Markovian processes in a wireless network with statistically-identical agents.<n>Our goal is to minimize time-average estimation error and/or age of information with decentralized scalable sampling and transmission policies.
arXiv Detail & Related papers (2024-04-04T06:24:11Z) - Towards Robust Federated Learning via Logits Calibration on Non-IID Data [49.286558007937856]
Federated learning (FL) is a privacy-preserving distributed management framework based on collaborative model training of distributed devices in edge networks.
Recent studies have shown that FL is vulnerable to adversarial examples, leading to a significant drop in its performance.
In this work, we adopt the adversarial training (AT) framework to improve the robustness of FL models against adversarial example (AE) attacks.
arXiv Detail & Related papers (2024-03-05T09:18:29Z) - FedDCT: A Dynamic Cross-Tier Federated Learning Framework in Wireless Networks [5.914766366715661]
Federated Learning (FL) trains a global model across devices without exposing local data.
resource heterogeneity and inevitable stragglers in wireless networks severely impact the efficiency and accuracy of FL training.
We propose a novel Dynamic Cross-Tier Federated Learning framework (FedDCT)
arXiv Detail & Related papers (2023-07-10T08:54:07Z) - Efficient Parallel Split Learning over Resource-constrained Wireless
Edge Networks [44.37047471448793]
In this paper, we advocate the integration of edge computing paradigm and parallel split learning (PSL)
We propose an innovative PSL framework, namely, efficient parallel split learning (EPSL) to accelerate model training.
We show that the proposed EPSL framework significantly decreases the training latency needed to achieve a target accuracy.
arXiv Detail & Related papers (2023-03-26T16:09:48Z) - RPN: A Residual Pooling Network for Efficient Federated Learning [20.363206529396948]
We propose a novel compression strategy called Residual Pooling Network (RPN)
RPN reduces data transmission effectively, but also achieve almost the same performance as compared to standard federated learning.
Our new approach performs as an end-to-end procedure, which should be readily applied to all CNN-based model training scenarios.
arXiv Detail & Related papers (2020-01-23T15:30:56Z)
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.