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TVFL: Tunable Vertical Federated Learning towards Communication-Efficient Model Serving | IEEE Conference Publication | IEEE Xplore

TVFL: Tunable Vertical Federated Learning towards Communication-Efficient Model Serving


Abstract:

Vertical federated learning (VFL) enables multiple participants with different data features and the same sample ID space to collaboratively train a model in a privacy-pr...Show More

Abstract:

Vertical federated learning (VFL) enables multiple participants with different data features and the same sample ID space to collaboratively train a model in a privacy-preserving way. However, the high computational and communication overheads hinder the adoption of VFL in many resource-limited or delay-sensitive applications. In this work, we focus on reducing the communication cost and delay incurred by the transmission of intermediate results in VFL model serving. We investigate the inference results, and find that a large portion of test samples can be predicted correctly by the active party alone, thus the corresponding communication for federated inference is dispensable. Based on this insight, we theoretically analyze the "dispensable communication" and propose a novel tunable vertical federated learning framework, named TVFL, to avoid "dispensable communication" in model serving as much as possible. TVFL can smartly switch between independent inference and federated inference based on the features of the input sample. We further reveal that such tunability is highly related to the importance of participants’ features. Our evaluations on seven datasets and three typical VFL models show that TVFL can save 57.6% communication cost and reduce 57.1% prediction latency with little performance degradation.
Date of Conference: 17-20 May 2023
Date Added to IEEE Xplore: 29 August 2023
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Conference Location: New York City, NY, USA

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I. Introduction

There are two main categories of federated learning frameworks, horizontal federated learning (HFL) and vertical federated learning (VFL), based on the distribution of participants’ data in the feature space and sample ID space. In HFL, participants share the same feature space but have different sample IDs [1]–[7]; while in VFL, participants share the same sample ID space but have different data features [1], [8]–[10]. As VFL is being used in various businesses such as insurance assessment and financial risk control, the high computational and communication overheads of VFL hinder its adoption in many resource-limited or delay-sensitive applications, e.g., mobile computing and online advertising.

Cites in Papers - |

Cites in Papers - IEEE (6)

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1.
Pengyu Zhang, Yingjie Liu, Yingbo Zhou, Ming Hu, Xian Wei, Mingsong Chen, "CE-FFT: Communication-Efficient Federated Fine-Tuning for Large Language Models via Quantization and In-Context Learning", ICASSP 2025 - 2025 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP), pp.1-5, 2025.
2.
Shuo Wang, Keke Gai, Jing Yu, Zijian Zhang, Liehuang Zhu, "PraVFed: Practical Heterogeneous Vertical Federated Learning via Representation Learning", IEEE Transactions on Information Forensics and Security, vol.20, pp.2693-2705, 2025.
3.
Yuanzhe Peng, Yusen Wu, Jieming Bian, Jie Xu, "Hybrid Federated Learning for Multimodal IoT Systems", IEEE Internet of Things Journal, vol.11, no.21, pp.34055-34064, 2024.
4.
Ju Huang, Lan Zhang, Cheng Ding, Dongbo Huang, Lan Xu, "MultiVFL: A Training-Efficient Framework for Multiple Vertical Federated Learning", 2024 10th International Conference on Big Data Computing and Communications (BigCom), pp.141-148, 2024.
5.
Junyang Wang, Lan Zhang, Junhao Wang, Mu Yuan, Yihang Cheng, Qian Xu, Bo Yu, "GraphProxy: Communication-Efficient Federated Graph Learning with Adaptive Proxy", IEEE INFOCOM 2024 - IEEE Conference on Computer Communications, pp.2179-2188, 2024.
6.
Jiahui Huang, Lan Zhang, Anran Li, Haoran Cheng, Jiexin Xu, Hongmei Song, "Adaptive and Efficient Participant Selection in Vertical Federated Learning", 2023 19th International Conference on Mobility, Sensing and Networking (MSN), pp.455-462, 2023.
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References

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