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FedCVT: Semi-supervised Vertical Federated Learning with Cross-view
  Training

FedCVT: Semi-supervised Vertical Federated Learning with Cross-view Training

25 August 2020
Yan Kang
Yang Liu
Xinle Liang
    FedML
ArXivPDFHTML

Papers citing "FedCVT: Semi-supervised Vertical Federated Learning with Cross-view Training"

14 / 14 papers shown
Title
Towards Active Participant Centric Vertical Federated Learning: Some Representations May Be All You Need
Towards Active Participant Centric Vertical Federated Learning: Some Representations May Be All You Need
Jon Irureta
Jon Imaz
Aizea Lojo
Javier Fernandez-Marques
Marco González
Iñigo Perona
FedML
87
1
0
20 Feb 2025
Contrastive Federated Learning with Tabular Data Silos
Contrastive Federated Learning with Tabular Data Silos
Achmad Ginanjar
Xue Li
Wen Hua
Jiaming Pei
FedML
71
2
0
17 Feb 2025
UniTrans: A Unified Vertical Federated Knowledge Transfer Framework for Enhancing Cross-Hospital Collaboration
UniTrans: A Unified Vertical Federated Knowledge Transfer Framework for Enhancing Cross-Hospital Collaboration
Chung-ju Huang
Yuanpeng He
Xiao Han
Wenpin Jiao
Zhi Jin
Leye Wang
FedML
33
1
0
20 Jan 2025
Vertical Federated Learning with Missing Features During Training and Inference
Vertical Federated Learning with Missing Features During Training and Inference
Pedro Valdeira
Shiqiang Wang
Yuejie Chi
FedML
37
2
0
29 Oct 2024
FedMultimodal: A Benchmark For Multimodal Federated Learning
FedMultimodal: A Benchmark For Multimodal Federated Learning
Tiantian Feng
Digbalay Bose
Tuo Zhang
Rajat Hebbar
Anil Ramakrishna
Rahul Gupta
Mi Zhang
Salman Avestimehr
Shrikanth Narayanan
32
48
0
15 Jun 2023
FedAds: A Benchmark for Privacy-Preserving CVR Estimation with Vertical
  Federated Learning
FedAds: A Benchmark for Privacy-Preserving CVR Estimation with Vertical Federated Learning
Penghui Wei
Hongjian Dou
Shaoguo Liu
Rong Tang
Li Liu
Liangji Wang
Bo Zheng
FedML
24
12
0
15 May 2023
Robust and IP-Protecting Vertical Federated Learning against Unexpected
  Quitting of Parties
Robust and IP-Protecting Vertical Federated Learning against Unexpected Quitting of Parties
Jingwei Sun
Zhixu Du
Anna Dai
Saleh Baghersalimi
Alireza Amirshahi
David Atienza
Yiran Chen
FedML
11
7
0
28 Mar 2023
Vertical Federated Knowledge Transfer via Representation Distillation
  for Healthcare Collaboration Networks
Vertical Federated Knowledge Transfer via Representation Distillation for Healthcare Collaboration Networks
Chung-ju Huang
Leye Wang
Xiao Han
FedML
24
24
0
11 Feb 2023
FedPass: Privacy-Preserving Vertical Federated Deep Learning with
  Adaptive Obfuscation
FedPass: Privacy-Preserving Vertical Federated Deep Learning with Adaptive Obfuscation
Hanlin Gu
Jiahuan Luo
Yan Kang
Lixin Fan
Qiang Yang
FedML
34
13
0
30 Jan 2023
Vertical Federated Learning: A Structured Literature Review
Vertical Federated Learning: A Structured Literature Review
Afsana Khan
M. T. Thij
A. Wilbik
FedML
50
10
0
01 Dec 2022
Vertical Federated Learning: Concepts, Advances and Challenges
Vertical Federated Learning: Concepts, Advances and Challenges
Yang Liu
Yan Kang
Tianyuan Zou
Yanhong Pu
Yuanqin He
Xiaozhou Ye
Ye Ouyang
Yaqin Zhang
Qian Yang
FedML
57
161
0
23 Nov 2022
Emerging Trends in Federated Learning: From Model Fusion to Federated X
  Learning
Emerging Trends in Federated Learning: From Model Fusion to Federated X Learning
Shaoxiong Ji
Yue Tan
Teemu Saravirta
Zhiqin Yang
Yixin Liu
Lauri Vasankari
Shirui Pan
Guodong Long
A. Walid
FedML
37
76
0
25 Feb 2021
Label Leakage and Protection in Two-party Split Learning
Label Leakage and Protection in Two-party Split Learning
Oscar Li
Jiankai Sun
Xin Yang
Weihao Gao
Hongyi Zhang
Junyuan Xie
Virginia Smith
Chong-Jun Wang
FedML
124
139
0
17 Feb 2021
Mean teachers are better role models: Weight-averaged consistency
  targets improve semi-supervised deep learning results
Mean teachers are better role models: Weight-averaged consistency targets improve semi-supervised deep learning results
Antti Tarvainen
Harri Valpola
OOD
MoMe
261
1,275
0
06 Mar 2017
1