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Towards Federated Bayesian Network Structure Learning with Continuous
  Optimization

Towards Federated Bayesian Network Structure Learning with Continuous Optimization

18 October 2021
Ignavier Ng
Kun Zhang
    FedML
ArXivPDFHTML

Papers citing "Towards Federated Bayesian Network Structure Learning with Continuous Optimization"

29 / 29 papers shown
Title
FedGES: A Federated Learning Approach for BN Structure Learning
FedGES: A Federated Learning Approach for BN Structure Learning
Pablo Torrijos
J. A. Gamez
J. M. Puerta
FedML
64
1
0
03 Feb 2025
$ψ$DAG: Projected Stochastic Approximation Iteration for DAG
  Structure Learning
ψψψDAG: Projected Stochastic Approximation Iteration for DAG Structure Learning
Klea Ziu
Slavomír Hanzely
Loka Li
Kun Zhang
Martin Takáč
Dmitry Kamzolov
33
1
0
31 Oct 2024
Revisiting Differentiable Structure Learning: Inconsistency of $\ell_1$
  Penalty and Beyond
Revisiting Differentiable Structure Learning: Inconsistency of ℓ1\ell_1ℓ1​ Penalty and Beyond
Kaifeng Jin
Ignavier Ng
Kun Zhang
Biwei Huang
30
0
0
24 Oct 2024
Interventional Causal Structure Discovery over Graphical Models with
  Convergence and Optimality Guarantees
Interventional Causal Structure Discovery over Graphical Models with Convergence and Optimality Guarantees
Qiu Chengbo
Yang Kai
CML
17
0
0
09 Aug 2024
Embarrassingly Parallel GFlowNets
Embarrassingly Parallel GFlowNets
Tiago da Silva
Luiz Max Carvalho
Amauri Souza
Samuel Kaski
Diego Mesquita
31
1
0
05 Jun 2024
CCBNet: Confidential Collaborative Bayesian Networks Inference
CCBNet: Confidential Collaborative Bayesian Networks Inference
Abele Malan
Jérémie Decouchant
Thiago Guzella
Lydia Y. Chen
13
0
0
23 May 2024
A Survey on Federated Analytics: Taxonomy, Enabling Techniques, Applications and Open Issues
A Survey on Federated Analytics: Taxonomy, Enabling Techniques, Applications and Open Issues
Zibo Wang
Haichao Ji
Yifei Zhu
Dan Wang
Zhu Han
37
1
0
19 Apr 2024
Federated Causal Discovery from Heterogeneous Data
Federated Causal Discovery from Heterogeneous Data
Loka Li
Ignavier Ng
Gongxu Luo
Biwei Huang
Guan-Hong Chen
Tongliang Liu
Bin Gu
Kun Zhang
FedML
26
5
0
20 Feb 2024
Federated Causality Learning with Explainable Adaptive Optimization
Federated Causality Learning with Explainable Adaptive Optimization
Dezhi Yang
Xintong He
Jun Wang
Guoxian Yu
C. Domeniconi
Jinglin Zhang
FedML
CML
12
6
0
09 Dec 2023
Towards Practical Federated Causal Structure Learning
Towards Practical Federated Causal Structure Learning
Zhaoyu Wang
Pingchuan Ma
Shuai Wang
23
5
0
15 Jun 2023
Bayesian Federated Learning: A Survey
Bayesian Federated Learning: A Survey
LongBing Cao
Hui Chen
Xuhui Fan
João Gama
Yew-Soon Ong
Vipin Kumar
FedML
13
21
0
26 Apr 2023
On Learning Time Series Summary DAGs: A Frequency Domain Approach
On Learning Time Series Summary DAGs: A Frequency Domain Approach
Aramayis Dallakyan
CML
AI4TS
6
3
0
17 Apr 2023
Structure Learning with Continuous Optimization: A Sober Look and Beyond
Structure Learning with Continuous Optimization: A Sober Look and Beyond
Ignavier Ng
Biwei Huang
Kun Zhang
CML
10
21
0
04 Apr 2023
Directed Acyclic Graphs With Tears
Directed Acyclic Graphs With Tears
Zhichao Chen
Zhiqiang Ge
CML
13
5
0
04 Feb 2023
Learning Personalized Brain Functional Connectivity of MDD Patients from
  Multiple Sites via Federated Bayesian Networks
Learning Personalized Brain Functional Connectivity of MDD Patients from Multiple Sites via Federated Bayesian Networks
Shuai Liu
Xiao Guo
S. Qi
Huan Wang
Xiangyu Chang
FedML
19
2
0
06 Jan 2023
Towards Privacy-Aware Causal Structure Learning in Federated Setting
Towards Privacy-Aware Causal Structure Learning in Federated Setting
Jianli Huang
Xianjie Guo
Kui Yu
Fuyuan Cao
Jiye Liang
FedML
8
9
0
13 Nov 2022
Federated Causal Discovery From Interventions
Federated Causal Discovery From Interventions
Amin Abyaneh
Nino Scherrer
Patrick Schwab
Stefan Bauer
Bernhard Schölkopf
Arash Mehrjou
FedML
13
0
0
07 Nov 2022
VertiBayes: Learning Bayesian network parameters from vertically
  partitioned data with missing values
VertiBayes: Learning Bayesian network parameters from vertically partitioned data with missing values
Florian Van Daalen
Lianne Ippel
Andre Dekker
Inigo Bermejo
FedML
13
3
0
31 Oct 2022
On the Sparse DAG Structure Learning Based on Adaptive Lasso
On the Sparse DAG Structure Learning Based on Adaptive Lasso
Danru Xu
Erdun Gao
Wei Huang
Menghan Wang
Andy Song
Mingming Gong
CML
6
4
0
07 Sep 2022
Multiscale Causal Structure Learning
Multiscale Causal Structure Learning
Gabriele DÁcunto
P. Lorenzo
Sergio Barbarossa
34
4
0
16 Jul 2022
Differentiable and Transportable Structure Learning
Differentiable and Transportable Structure Learning
Jeroen Berrevoets
Nabeel Seedat
F. Imrie
M. Schaar
6
2
0
13 Jun 2022
Differentiable Invariant Causal Discovery
Differentiable Invariant Causal Discovery
Yu-Xiang Wang
An Zhang
Xiang Wang
Yancheng Yuan
Xiangnan He
Tat-Seng Chua
OOD
CML
14
2
0
31 May 2022
Distributed Learning of Generalized Linear Causal Networks
Distributed Learning of Generalized Linear Causal Networks
Qiaoling Ye
Arash A. Amini
Qing Zhou
CML
OOD
AI4CE
13
16
0
23 Jan 2022
FedDAG: Federated DAG Structure Learning
FedDAG: Federated DAG Structure Learning
Erdun Gao
Junjia Chen
Li Shen
Tongliang Liu
Mingming Gong
H. Bondell
FedML
24
17
0
07 Dec 2021
On the Role of Entropy-based Loss for Learning Causal Structures with
  Continuous Optimization
On the Role of Entropy-based Loss for Learning Causal Structures with Continuous Optimization
Weilin Chen
Jie Qiao
Ruichu Cai
Z. Hao
CML
20
1
0
05 Jun 2021
On the Convergence of Continuous Constrained Optimization for Structure
  Learning
On the Convergence of Continuous Constrained Optimization for Structure Learning
Ignavier Ng
Sébastien Lachapelle
Nan Rosemary Ke
Simon Lacoste-Julien
Kun Zhang
20
31
0
23 Nov 2020
DAGs with No Fears: A Closer Look at Continuous Optimization for
  Learning Bayesian Networks
DAGs with No Fears: A Closer Look at Continuous Optimization for Learning Bayesian Networks
Dennis L. Wei
Tian Gao
Yue Yu
CML
48
71
0
18 Oct 2020
Masked Gradient-Based Causal Structure Learning
Masked Gradient-Based Causal Structure Learning
Ignavier Ng
Shengyu Zhu
Zhuangyan Fang
Haoyang Li
Zhitang Chen
Jun Wang
CML
72
116
0
18 Oct 2019
Learning Sparse Nonparametric DAGs
Learning Sparse Nonparametric DAGs
Xun Zheng
Chen Dan
Bryon Aragam
Pradeep Ravikumar
Eric P. Xing
CML
101
254
0
29 Sep 2019
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