ResearchTrend.AI
  • Papers
  • Communities
  • Events
  • Blog
  • Pricing
Papers
Communities
Social Events
Terms and Conditions
Pricing
Parameter LabParameter LabTwitterGitHubLinkedInBlueskyYoutube

© 2025 ResearchTrend.AI, All rights reserved.

  1. Home
  2. Papers
  3. 1311.3492
  4. Cited By
High-dimensional learning of linear causal networks via inverse
  covariance estimation

High-dimensional learning of linear causal networks via inverse covariance estimation

14 November 2013
Po-Ling Loh
Peter Buhlmann
    CML
ArXivPDFHTML

Papers citing "High-dimensional learning of linear causal networks via inverse covariance estimation"

27 / 27 papers shown
Title
Misspecification-robust likelihood-free inference in high dimensions
Misspecification-robust likelihood-free inference in high dimensions
Owen Thomas
Raquel Sá-Leao
H. Lencastre
Samuel Kaski
J. Corander
Henri Pesonen
71
9
0
17 Feb 2025
ExDAG: Exact learning of DAGs
ExDAG: Exact learning of DAGs
Pavel Rytír
Ales Wodecki
Jakub Marecek
CML
38
1
0
21 Jun 2024
Standardizing Structural Causal Models
Standardizing Structural Causal Models
Weronika Ormaniec
Scott Sussex
Lars Lorch
Bernhard Schölkopf
Andreas Krause
CML
47
5
0
17 Jun 2024
Optimal estimation of Gaussian (poly)trees
Optimal estimation of Gaussian (poly)trees
Yuhao Wang
Ming Gao
Wai Ming Tai
Bryon Aragam
Arnab Bhattacharyya
TPM
16
1
0
09 Feb 2024
Sample, estimate, aggregate: A recipe for causal discovery foundation models
Sample, estimate, aggregate: A recipe for causal discovery foundation models
Menghua Wu
Yujia Bao
Regina Barzilay
Tommi Jaakkola
CML
41
7
0
02 Feb 2024
Enhancing the Performance of Neural Networks Through Causal Discovery
  and Integration of Domain Knowledge
Enhancing the Performance of Neural Networks Through Causal Discovery and Integration of Domain Knowledge
Xiaoge Zhang
Xiao-Lin Wang
Fenglei Fan
Yiu-ming Cheung
Indranil Bose
20
1
0
29 Nov 2023
Bayesian Approach to Linear Bayesian Networks
Bayesian Approach to Linear Bayesian Networks
Seyong Hwang
Kyoungjae Lee
Sunmin Oh
Gunwoong Park
24
0
0
27 Nov 2023
Identifiability of Homoscedastic Linear Structural Equation Models using
  Algebraic Matroids
Identifiability of Homoscedastic Linear Structural Equation Models using Algebraic Matroids
Mathias Drton
Benjamin Hollering
June Wu
14
1
0
03 Aug 2023
Testing Sparsity Assumptions in Bayesian Networks
Testing Sparsity Assumptions in Bayesian Networks
Luke Duttweiler
Sally W. Thurston
A. Almudevar
16
0
0
12 Jul 2023
Learning DAGs from Data with Few Root Causes
Learning DAGs from Data with Few Root Causes
Panagiotis Misiakos
Chris Wendler
Markus Püschel
CML
29
10
0
25 May 2023
Generalized Precision Matrix for Scalable Estimation of Nonparametric
  Markov Networks
Generalized Precision Matrix for Scalable Estimation of Nonparametric Markov Networks
Yujia Zheng
Ignavier Ng
Yewen Fan
Kun Zhang
11
4
0
19 May 2023
Causal Structural Learning from Time Series: A Convex Optimization
  Approach
Causal Structural Learning from Time Series: A Convex Optimization Approach
S. Wei
Yao Xie
CML
27
2
0
26 Jan 2023
Directed Acyclic Graph Structure Learning from Dynamic Graphs
Directed Acyclic Graph Structure Learning from Dynamic Graphs
Shaohua Fan
Shuyang Zhang
Xiao Wang
Chuan Shi
CML
31
5
0
30 Nov 2022
DAGMA: Learning DAGs via M-matrices and a Log-Determinant Acyclicity
  Characterization
DAGMA: Learning DAGs via M-matrices and a Log-Determinant Acyclicity Characterization
Kevin Bello
Bryon Aragam
Pradeep Ravikumar
53
78
0
16 Sep 2022
Truncated Matrix Power Iteration for Differentiable DAG Learning
Truncated Matrix Power Iteration for Differentiable DAG Learning
Zhen Zhang
Ignavier Ng
Dong Gong
Yuhang Liu
Ehsan Abbasnejad
Mingming Gong
Kun Zhang
Javen Qinfeng Shi
22
25
0
30 Aug 2022
Optimal estimation of Gaussian DAG models
Optimal estimation of Gaussian DAG models
Ming Gao
W. Tai
Bryon Aragam
30
9
0
25 Jan 2022
A Fast Non-parametric Approach for Local Causal Structure Learning
A Fast Non-parametric Approach for Local Causal Structure Learning
Mona Azadkia
Armeen Taeb
Peter Buhlmann
CML
21
3
0
29 Nov 2021
Structure learning in polynomial time: Greedy algorithms, Bregman
  information, and exponential families
Structure learning in polynomial time: Greedy algorithms, Bregman information, and exponential families
Goutham Rajendran
Bohdan Kivva
Ming Gao
Bryon Aragam
21
17
0
10 Oct 2021
Unsuitability of NOTEARS for Causal Graph Discovery
Unsuitability of NOTEARS for Causal Graph Discovery
Marcus Kaiser
Maksim Sipos
CML
17
65
0
12 Apr 2021
Beware of the Simulated DAG! Causal Discovery Benchmarks May Be Easy To
  Game
Beware of the Simulated DAG! Causal Discovery Benchmarks May Be Easy To Game
Alexander G. Reisach
C. Seiler
S. Weichwald
CML
10
136
0
26 Feb 2021
DYNOTEARS: Structure Learning from Time-Series Data
DYNOTEARS: Structure Learning from Time-Series Data
Roxana Pamfil
Nisara Sriwattanaworachai
Shaan Desai
Philip Pilgerstorfer
Paul Beaumont
K. Georgatzis
Bryon Aragam
CML
AI4TS
BDL
17
187
0
02 Feb 2020
On Causal Discovery with Equal Variance Assumption
On Causal Discovery with Equal Variance Assumption
Wenyu Chen
Mathias Drton
Y Samuel Wang
CML
14
84
0
09 Jul 2018
Learning linear structural equation models in polynomial time and sample
  complexity
Learning linear structural equation models in polynomial time and sample complexity
Asish Ghoshal
Jean Honorio
CML
28
83
0
15 Jul 2017
Learning Quadratic Variance Function (QVF) DAG models via OverDispersion
  Scoring (ODS)
Learning Quadratic Variance Function (QVF) DAG models via OverDispersion Scoring (ODS)
G. Park
Garvesh Raskutti
CML
16
45
0
28 Apr 2017
Identifying Best Interventions through Online Importance Sampling
Identifying Best Interventions through Online Importance Sampling
Rajat Sen
Karthikeyan Shanmugam
A. Dimakis
Sanjay Shakkottai
12
72
0
10 Jan 2017
Learning Directed Acyclic Graphs with Penalized Neighbourhood Regression
Learning Directed Acyclic Graphs with Penalized Neighbourhood Regression
Bryon Aragam
Arash A. Amini
Qing Zhou
CML
14
42
0
29 Nov 2015
A Transformational Characterization of Equivalent Bayesian Network
  Structures
A Transformational Characterization of Equivalent Bayesian Network Structures
D. M. Chickering
151
416
0
20 Feb 2013
1