Poisoning Attacks on Federated Learning-based Wireless Traffic Prediction
- URL: http://arxiv.org/abs/2404.14389v1
- Date: Mon, 22 Apr 2024 17:50:27 GMT
- Title: Poisoning Attacks on Federated Learning-based Wireless Traffic Prediction
- Authors: Zifan Zhang, Minghong Fang, Jiayuan Huang, Yuchen Liu,
- Abstract summary: Federated Learning (FL) offers a distributed framework to train a global control model across multiple base stations.
This makes it ideal for applications like wireless traffic prediction (WTP), which plays a crucial role in optimizing network resources.
Despite its promise, the security aspects of FL-based distributed wireless systems, particularly in regression-based WTP problems, remain inadequately investigated.
- Score: 4.968718867282096
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Federated Learning (FL) offers a distributed framework to train a global control model across multiple base stations without compromising the privacy of their local network data. This makes it ideal for applications like wireless traffic prediction (WTP), which plays a crucial role in optimizing network resources, enabling proactive traffic flow management, and enhancing the reliability of downstream communication-aided applications, such as IoT devices, autonomous vehicles, and industrial automation systems. Despite its promise, the security aspects of FL-based distributed wireless systems, particularly in regression-based WTP problems, remain inadequately investigated. In this paper, we introduce a novel fake traffic injection (FTI) attack, designed to undermine the FL-based WTP system by injecting fabricated traffic distributions with minimal knowledge. We further propose a defense mechanism, termed global-local inconsistency detection (GLID), which strategically removes abnormal model parameters that deviate beyond a specific percentile range estimated through statistical methods in each dimension. Extensive experimental evaluations, performed on real-world wireless traffic datasets, demonstrate that both our attack and defense strategies significantly outperform existing baselines.
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