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Privacy-Preserving Gradient Boosting Decision Trees

Privacy-Preserving Gradient Boosting Decision Trees

11 November 2019
Yue Liu
Zhaomin Wu
Zeyi Wen
Bingsheng He
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Papers citing "Privacy-Preserving Gradient Boosting Decision Trees"

12 / 12 papers shown
Title
Bilateral Differentially Private Vertical Federated Boosted Decision Trees
Bilateral Differentially Private Vertical Federated Boosted Decision Trees
Bokang Zhang
Zhikun Zhang
Haodong Jiang
Yong-Jin Liu
Lihao Zheng
Yuxiao Zhou
Shuaiting Huang
Junfeng Wu
FedML
77
0
0
30 Apr 2025
Bipartite Randomized Response Mechanism for Local Differential Privacy
Bipartite Randomized Response Mechanism for Local Differential Privacy
Shun Zhang
Hai Zhu
Zhili Chen
N. Xiong
23
0
0
29 Apr 2025
Universally Harmonizing Differential Privacy Mechanisms for Federated
  Learning: Boosting Accuracy and Convergence
Universally Harmonizing Differential Privacy Mechanisms for Federated Learning: Boosting Accuracy and Convergence
Shuya Feng
Meisam Mohammady
Hanbin Hong
Shenao Yan
Ashish Kundu
Binghui Wang
Yuan Hong
FedML
41
3
0
20 Jul 2024
How to DP-fy ML: A Practical Guide to Machine Learning with Differential
  Privacy
How to DP-fy ML: A Practical Guide to Machine Learning with Differential Privacy
Natalia Ponomareva
Hussein Hazimeh
Alexey Kurakin
Zheng Xu
Carson E. Denison
H. B. McMahan
Sergei Vassilvitskii
Steve Chien
Abhradeep Thakurta
94
167
0
01 Mar 2023
Federated Learning for Healthcare Domain - Pipeline, Applications and
  Challenges
Federated Learning for Healthcare Domain - Pipeline, Applications and Challenges
Madhura Joshi
Ankit Pal
Malaikannan Sankarasubbu
OOD
AI4CE
FedML
25
93
0
15 Nov 2022
Federated Boosted Decision Trees with Differential Privacy
Federated Boosted Decision Trees with Differential Privacy
Samuel Maddock
Graham Cormode
Tianhao Wang
Carsten Maple
S. Jha
FedML
23
29
0
06 Oct 2022
DP-XGBoost: Private Machine Learning at Scale
DP-XGBoost: Private Machine Learning at Scale
Cheng Cheng
Wei Dai
14
8
0
25 Oct 2021
Accuracy, Interpretability, and Differential Privacy via Explainable
  Boosting
Accuracy, Interpretability, and Differential Privacy via Explainable Boosting
Harsha Nori
R. Caruana
Zhiqi Bu
J. Shen
Janardhan Kulkarni
33
37
0
17 Jun 2021
SoK: Privacy-Preserving Collaborative Tree-based Model Learning
SoK: Privacy-Preserving Collaborative Tree-based Model Learning
Sylvain Chatel
Apostolos Pyrgelis
J. Troncoso-Pastoriza
Jean-Pierre Hubaux
15
14
0
16 Mar 2021
A Novel Privacy-Preserved Recommender System Framework based on
  Federated Learning
A Novel Privacy-Preserved Recommender System Framework based on Federated Learning
Jiangcheng Qin
Baisong Liu
FedML
19
19
0
11 Nov 2020
FederBoost: Private Federated Learning for GBDT
FederBoost: Private Federated Learning for GBDT
Zhihua Tian
Rui Zhang
Xiaoyang Hou
Jian-wei Liu
K. Ren
Jian Liu
Kui Ren
FedML
AI4CE
47
66
0
05 Nov 2020
Practical Federated Gradient Boosting Decision Trees
Practical Federated Gradient Boosting Decision Trees
Yue Liu
Zeyi Wen
Bingsheng He
FedML
AI4CE
13
186
0
11 Nov 2019
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