Toward Few-Label Vertical Federated Learning

Author:

Zhang Lei1ORCID,Fu Lele2ORCID,Liu Chen3ORCID,Yang Zhao3ORCID,Yang Jinghua4ORCID,Zheng Zibin1ORCID,Chen Chuan5ORCID

Affiliation:

1. Sun Yat-Sen University, Guangzhou, China

2. School of Systems Science and Engineering, Sun Yat-Sen University, Guangzhou, China

3. Shenzhen Transsion Holdings Co. Ltd.,, Shenzhen China

4. Southwest Jiaotong University, Chengdu China

5. School of Data and Computer Science, Sun Yat-Sen University, Guangzhou, China

Abstract

Federated Learning (FL) provides a novel paradigm for privacy-preserving machine learning, enabling multiple clients to collaborate on model training without sharing private data. To handle multi-source heterogeneous data, Vertical Federated Learning (VFL) has been extensively investigated. However, in the context of VFL, the label information tends to be kept in one authoritative client and is very limited. This poses two challenges for model training in the VFL scenario. On the one hand, a small number of labels cannot guarantee to train a well VFL model with informative network parameters, resulting in unclear boundaries for classification decisions. On the other hand, the large amount of unlabeled data is dominant and should not be discounted, and it is worthwhile to focus on how to leverage them to improve representation modeling capabilities. To address the preceding two challenges, we first introduce supervised contrastive loss to enhance the intra-class aggregation and inter-class estrangement, which is to deeply explore label information and improve the effectiveness of downstream classification tasks. Then, for unlabeled data, we introduce a pseudo-label-guided consistency mechanism to induce the classification results coherent across clients, which allows the representations learned by local networks to absorb the knowledge from other clients, and alleviates the disagreement between different clients for classification tasks. We conduct sufficient experiments on four commonly used datasets, and the experimental results demonstrate that our method is superior to the state-of-the-art methods, especially in the low-label rate scenario, and the improvement becomes more significant.

Funder

the National Key Research and Development Program of China

the National Natural Science Foundation of China

the Guangzhou Science and Technology Program

the Natural Science Foundation of Sichuan Province

Postdoctoral Fellowship Program of CPSF

Publisher

Association for Computing Machinery (ACM)

Reference61 articles.

1. Federated learning with personalization layers;Arivazhagan Manoj Ghuhan;arXiv preprint arXiv:1912.00818,2019

2. Arthur Asuncion and David Newman. 2007. UCI Machine Learning Repository. Retrieved April 15 2024 from https://archive.ics.uci.edu

3. Combining labeled and unlabeled data with co-training

4. Towards federated learning at scale: System design;Bonawitz Keith;Proceedings of Machine Learning and Systems,2019

5. Akin Caliskan, Armin Mustafa, Evren Imre, and Adrian Hilton. 2020. Multi-view consistency loss for improved single-image 3D reconstruction of clothed people. In Proceedings of the Asian Conference on Computer Vision.

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