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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

26 February 2021
Alexander G. Reisach
C. Seiler
S. Weichwald
    CML
ArXivPDFHTML

Papers citing "Beware of the Simulated DAG! Causal Discovery Benchmarks May Be Easy To Game"

45 / 45 papers shown
Title
CausalDynamics: A large-scale benchmark for structural discovery of dynamical causal models
CausalDynamics: A large-scale benchmark for structural discovery of dynamical causal models
Benjamin Herdeanu
Juan Nathaniel
Carla Roesch
Jatan Buch
Gregor Ramien
Johannes Haux
Pierre Gentine
CML
AI4CE
77
0
0
22 May 2025
Unitless Unrestricted Markov-Consistent SCM Generation: Better Benchmark Datasets for Causal Discovery
Unitless Unrestricted Markov-Consistent SCM Generation: Better Benchmark Datasets for Causal Discovery
Rebecca Herman
Jonas Wahl
Urmi Ninad
Jakob Runge
79
1
0
21 Mar 2025
Characterization and Greedy Learning of Gaussian Structural Causal Models under Unknown Interventions
Characterization and Greedy Learning of Gaussian Structural Causal Models under Unknown Interventions
Juan L. Gamella
Armeen Taeb
C. Heinze-Deml
Peter Buhlmann
CML
122
8
0
13 Mar 2025
Addressing pitfalls in implicit unobserved confounding synthesis using explicit block hierarchical ancestral sampling
Addressing pitfalls in implicit unobserved confounding synthesis using explicit block hierarchical ancestral sampling
Xudong Sun
Alex Markham
Pratik Misra
Carsten Marr
CML
123
0
0
12 Mar 2025
Your Assumed DAG is Wrong and Here's How To Deal With It
Kirtan Padh
Zhufeng Li
Cecilia Casolo
Niki Kilbertus
CML
81
0
0
24 Feb 2025
Causal Discovery via Bayesian Optimization
Bao Duong
Sunil Gupta
Thin Nguyen
122
0
0
28 Jan 2025
A Skewness-Based Criterion for Addressing Heteroscedastic Noise in Causal Discovery
A Skewness-Based Criterion for Addressing Heteroscedastic Noise in Causal Discovery
Yingyu Lin
Yuxing Huang
Wenqin Liu
Haoran Deng
Ignavier Ng
Kun Zhang
Biwei Huang
Yi-An Ma
Zhen Zhang
71
1
0
08 Oct 2024
Score matching through the roof: linear, nonlinear, and latent variables causal discovery
Score matching through the roof: linear, nonlinear, and latent variables causal discovery
Francesco Montagna
P. M. Faller
Patrick Bloebaum
Elke Kirschbaum
Francesco Locatello
CML
113
0
0
26 Jul 2024
Standardizing Structural Causal Models
Standardizing Structural Causal Models
Weronika Ormaniec
Scott Sussex
Lars Lorch
Bernhard Schölkopf
Andreas Krause
CML
80
6
0
17 Jun 2024
Deriving Causal Order from Single-Variable Interventions: Guarantees & Algorithm
Deriving Causal Order from Single-Variable Interventions: Guarantees & Algorithm
Mathieu Chevalley
Patrick Schwab
Arash Mehrjou
93
1
0
28 May 2024
Demystifying amortized causal discovery with transformers
Demystifying amortized causal discovery with transformers
Francesco Montagna
Max Cairney-Leeming
Dhanya Sridhar
Francesco Locatello
CML
96
1
0
27 May 2024
ALCM: Autonomous LLM-Augmented Causal Discovery Framework
ALCM: Autonomous LLM-Augmented Causal Discovery Framework
Elahe Khatibi
Mahyar Abbasian
Zhongqi Yang
Iman Azimi
Amir M. Rahmani
88
14
0
02 May 2024
Signature Kernel Conditional Independence Tests in Causal Discovery for Stochastic Processes
Signature Kernel Conditional Independence Tests in Causal Discovery for Stochastic Processes
Georg Manten
Cecilia Casolo
E. Ferrucci
Søren Wengel Mogensen
C. Salvi
Niki Kilbertus
CML
BDL
166
12
0
28 Feb 2024
Effective Bayesian Causal Inference via Structural Marginalisation and Autoregressive Orders
Effective Bayesian Causal Inference via Structural Marginalisation and Autoregressive Orders
Christian Toth
Christian Knoll
Franz Pernkopf
Robert Peharz
CML
99
1
0
22 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
81
7
0
02 Feb 2024
Integrating Large Language Models in Causal Discovery: A Statistical Causal Approach
Integrating Large Language Models in Causal Discovery: A Statistical Causal Approach
Masayuki Takayama
Tadahisa Okuda
Thong Pham
T. Ikenoue
Shingo Fukuma
Shohei Shimizu
Akiyoshi Sannai
107
20
0
02 Feb 2024
Unsuitability of NOTEARS for Causal Graph Discovery
Unsuitability of NOTEARS for Causal Graph Discovery
Marcus Kaiser
Maksim Sipos
CML
81
65
0
12 Apr 2021
D'ya like DAGs? A Survey on Structure Learning and Causal Discovery
D'ya like DAGs? A Survey on Structure Learning and Causal Discovery
M. Vowels
Necati Cihan Camgöz
Richard Bowden
CML
101
300
0
03 Mar 2021
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
72
71
0
18 Oct 2020
Differentiable Causal Discovery Under Unmeasured Confounding
Differentiable Causal Discovery Under Unmeasured Confounding
Rohit Bhattacharya
Tushar Nagarajan
Daniel Malinsky
I. Shpitser
CML
58
60
0
14 Oct 2020
Differentiable Causal Discovery from Interventional Data
Differentiable Causal Discovery from Interventional Data
P. Brouillard
Sébastien Lachapelle
Alexandre Lacoste
Simon Lacoste-Julien
Alexandre Drouin
CML
59
186
0
03 Jul 2020
A polynomial-time algorithm for learning nonparametric causal graphs
A polynomial-time algorithm for learning nonparametric causal graphs
Ming Gao
Yi Ding
Bryon Aragam
CML
23
32
0
22 Jun 2020
On the Role of Sparsity and DAG Constraints for Learning Linear DAGs
On the Role of Sparsity and DAG Constraints for Learning Linear DAGs
Ignavier Ng
AmirEmad Ghassami
Kun Zhang
CML
50
189
0
17 Jun 2020
Causal structure learning from time series: Large regression
  coefficients may predict causal links better in practice than small p-values
Causal structure learning from time series: Large regression coefficients may predict causal links better in practice than small p-values
S. Weichwald
M. E. Jakobsen
Phillip B. Mogensen
Lasse Petersen
Nikolaj Thams
Gherardo Varando
CML
AI4TS
71
27
0
21 Feb 2020
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
64
191
0
02 Feb 2020
Causality for Machine Learning
Causality for Machine Learning
Bernhard Schölkopf
CML
AI4CE
LRM
82
461
0
24 Nov 2019
Scaling structural learning with NO-BEARS to infer causal transcriptome
  networks
Scaling structural learning with NO-BEARS to infer causal transcriptome networks
Hao-Chih Lee
M. Danieletto
Riccardo Miotto
S. Cherng
J. Dudley
CML
35
46
0
31 Oct 2019
Learning Sparse Nonparametric DAGs
Learning Sparse Nonparametric DAGs
Xun Zheng
Chen Dan
Bryon Aragam
Pradeep Ravikumar
Eric Xing
CML
150
260
0
29 Sep 2019
Gradient-Based Neural DAG Learning
Gradient-Based Neural DAG Learning
Sébastien Lachapelle
P. Brouillard
T. Deleu
Simon Lacoste-Julien
BDL
CML
50
273
0
05 Jun 2019
DAG-GNN: DAG Structure Learning with Graph Neural Networks
DAG-GNN: DAG Structure Learning with Graph Neural Networks
Yue Yu
Jie Chen
Tian Gao
Mo Yu
BDL
CML
GNN
67
485
0
22 Apr 2019
On Causal Discovery with Equal Variance Assumption
On Causal Discovery with Equal Variance Assumption
Wenyu Chen
Mathias Drton
Y Samuel Wang
CML
66
85
0
09 Jul 2018
DAGs with NO TEARS: Continuous Optimization for Structure Learning
DAGs with NO TEARS: Continuous Optimization for Structure Learning
Xun Zheng
Bryon Aragam
Pradeep Ravikumar
Eric Xing
NoLa
CML
OffRL
82
937
0
04 Mar 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
78
84
0
15 Jul 2017
Learning Identifiable Gaussian Bayesian Networks in Polynomial Time and
  Sample Complexity
Learning Identifiable Gaussian Bayesian Networks in Polynomial Time and Sample Complexity
Asish Ghoshal
Jean Honorio
CML
TPM
67
55
0
03 Mar 2017
Concave Penalized Estimation of Sparse Gaussian Bayesian Networks
Concave Penalized Estimation of Sparse Gaussian Bayesian Networks
Bryon Aragam
Qing Zhou
CML
105
107
0
04 Jan 2014
High-dimensional learning of linear causal networks via inverse
  covariance estimation
High-dimensional learning of linear causal networks via inverse covariance estimation
Po-Ling Loh
Peter Buhlmann
CML
107
189
0
14 Nov 2013
CAM: Causal additive models, high-dimensional order search and penalized
  regression
CAM: Causal additive models, high-dimensional order search and penalized regression
Peter Buhlmann
J. Peters
J. Ernest
CML
106
323
0
06 Oct 2013
Strong Completeness and Faithfulness in Bayesian Networks
Strong Completeness and Faithfulness in Bayesian Networks
Christopher Meek
104
308
0
20 Feb 2013
A Transformational Characterization of Equivalent Bayesian Network
  Structures
A Transformational Characterization of Equivalent Bayesian Network Structures
D. M. Chickering
234
417
0
20 Feb 2013
Learning Equivalence Classes of Bayesian Networks Structures
Learning Equivalence Classes of Bayesian Networks Structures
D. M. Chickering
96
832
0
13 Feb 2013
Large-Sample Learning of Bayesian Networks is NP-Hard
Large-Sample Learning of Bayesian Networks is NP-Hard
D. M. Chickering
Christopher Meek
David Heckerman
BDL
117
793
0
19 Oct 2012
Identifiability of Gaussian structural equation models with equal error
  variances
Identifiability of Gaussian structural equation models with equal error variances
J. Peters
Peter Buhlmann
CML
170
336
0
11 May 2012
On the Identifiability of the Post-Nonlinear Causal Model
On the Identifiability of the Post-Nonlinear Causal Model
Kun Zhang
Aapo Hyvarinen
CML
180
564
0
09 May 2012
DirectLiNGAM: A direct method for learning a linear non-Gaussian
  structural equation model
DirectLiNGAM: A direct method for learning a linear non-Gaussian structural equation model
Shohei Shimizu
Takanori Inazumi
Yasuhiro Sogawa
Aapo Hyvarinen
Yoshinobu Kawahara
Takashi Washio
P. Hoyer
K. Bollen
CML
97
510
0
13 Jan 2011
Penalized Likelihood Methods for Estimation of Sparse High Dimensional
  Directed Acyclic Graphs
Penalized Likelihood Methods for Estimation of Sparse High Dimensional Directed Acyclic Graphs
Ali Shojaie
George Michailidis
CML
133
200
0
28 Nov 2009
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