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Causal Inference and Causal Explanation with Background Knowledge

Causal Inference and Causal Explanation with Background Knowledge

20 February 2013
Christopher Meek
    CML
ArXivPDFHTML

Papers citing "Causal Inference and Causal Explanation with Background Knowledge"

48 / 48 papers shown
Title
Characterization and Learning of Causal Graphs from Hard Interventions
Characterization and Learning of Causal Graphs from Hard Interventions
Zihan Zhou
Muhammad Qasim Elahi
Murat Kocaoglu
CML
77
0
0
02 May 2025
Event-Triggered Nonlinear Model Predictive Control for Cooperative Cable-Suspended Payload Transportation with Multi-Quadrotors
Event-Triggered Nonlinear Model Predictive Control for Cooperative Cable-Suspended Payload Transportation with Multi-Quadrotors
Tohid Kargar Tasooji
Sakineh Khodadadi
Guangjun Liu
22
0
0
26 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
81
7
0
13 Mar 2025
IGDA: Interactive Graph Discovery through Large Language Model Agents
IGDA: Interactive Graph Discovery through Large Language Model Agents
Alex Havrilla
David Alvarez-Melis
Nicolò Fusi
AI4CE
40
0
0
24 Feb 2025
SNAP: Sequential Non-Ancestor Pruning for Targeted Causal Effect Estimation With an Unknown Graph
SNAP: Sequential Non-Ancestor Pruning for Targeted Causal Effect Estimation With an Unknown Graph
Mátyás Schubert
Tom Claassen
Sara Magliacane
CML
66
0
0
11 Feb 2025
Practically Effective Adjustment Variable Selection in Causal Inference
Practically Effective Adjustment Variable Selection in Causal Inference
Atsushi Noda
Takashi Isozaki
61
0
0
04 Feb 2025
Standardizing Structural Causal Models
Standardizing Structural Causal Models
Weronika Ormaniec
Scott Sussex
Lars Lorch
Bernhard Schölkopf
Andreas Krause
CML
39
5
0
17 Jun 2024
Adaptive Online Experimental Design for Causal Discovery
Adaptive Online Experimental Design for Causal Discovery
Muhammad Qasim Elahi
Lai Wei
Murat Kocaoglu
Mahsa Ghasemi
CML
31
1
0
19 May 2024
Beyond the Edge: An Advanced Exploration of Reinforcement Learning for
  Mobile Edge Computing, its Applications, and Future Research Trajectories
Beyond the Edge: An Advanced Exploration of Reinforcement Learning for Mobile Edge Computing, its Applications, and Future Research Trajectories
Ning Yang
Shuo Chen
Haijun Zhang
Randall Berry
OffRL
29
5
0
22 Apr 2024
Online Handbook of Argumentation for AI: Volume 4
Online Handbook of Argumentation for AI: Volume 4
Lars Bengel
Lydia Blümel
Elfia Bezou-Vrakatseli
Federico Castagna
Giulia DÁgostino
...
Daphne Odekerken
Fabrizio Russo
Stefan Sarkadi
Madeleine Waller
A. Xydis
15
0
0
20 Dec 2023
Learning bounded-degree polytrees with known skeleton
Learning bounded-degree polytrees with known skeleton
Davin Choo
Joy Qiping Yang
Arnab Bhattacharyya
C. Canonne
13
2
0
10 Oct 2023
Human-in-the-Loop Causal Discovery under Latent Confounding using
  Ancestral GFlowNets
Human-in-the-Loop Causal Discovery under Latent Confounding using Ancestral GFlowNets
Tiago da Silva
Eliezer de Souza da Silva
Adèle Ribeiro
António Góis
Dominik Heider
Samuel Kaski
Diego Mesquita
CML
35
6
0
21 Sep 2023
Discovering Causal Relations and Equations from Data
Discovering Causal Relations and Equations from Data
Gustau Camps-Valls
Andreas Gerhardus
Urmi Ninad
Gherardo Varando
Georg Martius
E. Balaguer-Ballester
Ricardo Vinuesa
Emiliano Díaz
L. Zanna
Jakob Runge
PINN
AI4Cl
AI4CE
CML
27
72
0
21 May 2023
A Survey on Causal Discovery: Theory and Practice
A Survey on Causal Discovery: Theory and Practice
Alessio Zanga
Fabio Stella
CML
19
37
0
17 May 2023
Causal Razors
Causal Razors
Wai-yin Lam
CML
14
0
0
20 Feb 2023
CDANs: Temporal Causal Discovery from Autocorrelated and Non-Stationary
  Time Series Data
CDANs: Temporal Causal Discovery from Autocorrelated and Non-Stationary Time Series Data
Muhammad Hasan Ferdous
Uzma Hasan
Md. Osman Gani
CML
20
3
0
07 Feb 2023
Fast Parallel Bayesian Network Structure Learning
Fast Parallel Bayesian Network Structure Learning
Jiantong Jiang
Zeyi Wen
Ajmal Saeed Mian
17
6
0
08 Dec 2022
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
19
9
0
13 Nov 2022
Domain Knowledge in A*-Based Causal Discovery
Domain Knowledge in A*-Based Causal Discovery
Steven Kleinegesse
A. Lawrence
Hana Chockler
CML
8
2
0
17 Aug 2022
A Causal Approach to Detecting Multivariate Time-series Anomalies and
  Root Causes
A Causal Approach to Detecting Multivariate Time-series Anomalies and Root Causes
Wenzhuo Yang
Kun Zhang
S. Hoi
AI4TS
CML
18
9
0
30 Jun 2022
Counterfactual Fairness with Partially Known Causal Graph
Counterfactual Fairness with Partially Known Causal Graph
Aoqi Zuo
Susan Wei
Tongliang Liu
Bo Han
Kun Zhang
Mingming Gong
OOD
FaML
11
19
0
27 May 2022
Polynomial-Time Algorithms for Counting and Sampling Markov Equivalent
  DAGs with Applications
Polynomial-Time Algorithms for Counting and Sampling Markov Equivalent DAGs with Applications
Marcel Wienöbst
Max Bannach
Maciej Liskiewicz
14
9
0
05 May 2022
From Statistical to Causal Learning
From Statistical to Causal Learning
Bernhard Schölkopf
Julius von Kügelgen
CML
15
45
0
01 Apr 2022
Causal discovery for observational sciences using supervised machine
  learning
Causal discovery for observational sciences using supervised machine learning
A. H. Petersen
Joseph Ramsey
C. Ekstrøm
Peter Spirtes
CML
22
14
0
25 Feb 2022
Variable elimination, graph reduction and efficient g-formula
Variable elimination, graph reduction and efficient g-formula
F. R. Guo
Emilija Perković
A. Rotnitzky
CML
9
5
0
24 Feb 2022
The Dual PC Algorithm and the Role of Gaussianity for Structure Learning
  of Bayesian Networks
The Dual PC Algorithm and the Role of Gaussianity for Structure Learning of Bayesian Networks
Enrico Giudice
Jack Kuipers
G. Moffa
CML
59
5
0
16 Dec 2021
gCastle: A Python Toolbox for Causal Discovery
gCastle: A Python Toolbox for Causal Discovery
Keli Zhang
Shengyu Zhu
Marcus Kalander
Ignavier Ng
Junjian Ye
Zhitang Chen
Lujia Pan
CML
14
59
0
30 Nov 2021
Universal Lower Bound for Learning Causal DAGs with Atomic Interventions
Universal Lower Bound for Learning Causal DAGs with Atomic Interventions
Vibhor Porwal
P. Srivastava
Gaurav Sinha
CML
15
2
0
09 Nov 2021
A survey of Bayesian Network structure learning
A survey of Bayesian Network structure learning
N. K. Kitson
Anthony C. Constantinou
Zhi-gao Guo
Yang Liu
Kiattikun Chobtham
CML
13
181
0
23 Sep 2021
A Fast PC Algorithm with Reversed-order Pruning and A Parallelization
  Strategy
A Fast PC Algorithm with Reversed-order Pruning and A Parallelization Strategy
Kai Zhang
Chao Tian
Kun Zhang
Todd Johnson
Xiaoqian Jiang
CML
30
4
0
10 Sep 2021
Data-driven discovery of interpretable causal relations for deep
  learning material laws with uncertainty propagation
Data-driven discovery of interpretable causal relations for deep learning material laws with uncertainty propagation
Xiao Sun
B. Bahmani
Nikolaos N. Vlassis
WaiChing Sun
Yanxun Xu
CML
AI4CE
55
26
0
20 May 2021
Active Structure Learning of Causal DAGs via Directed Clique Tree
Active Structure Learning of Causal DAGs via Directed Clique Tree
C. Squires
Sara Magliacane
Kristjan Greenewald
Dmitriy A. Katz
Murat Kocaoglu
Karthikeyan Shanmugam
CML
48
33
0
01 Nov 2020
A Weaker Faithfulness Assumption based on Triple Interactions
A Weaker Faithfulness Assumption based on Triple Interactions
Alexander Marx
A. Gretton
Joris M. Mooij
13
14
0
27 Oct 2020
Size of Interventional Markov Equivalence Classes in Random DAG Models
Size of Interventional Markov Equivalence Classes in Random DAG Models
Dmitriy A. Katz
Karthikeyan Shanmugam
C. Squires
Caroline Uhler
CML
19
9
0
05 Mar 2019
Efficient Sampling and Structure Learning of Bayesian Networks
Efficient Sampling and Structure Learning of Bayesian Networks
Jack Kuipers
Polina Suter
G. Moffa
TPM
CML
8
69
0
21 Mar 2018
Counting and Sampling from Markov Equivalent DAGs Using Clique Trees
Counting and Sampling from Markov Equivalent DAGs Using Clique Trees
AmirEmad Ghassami
Saber Salehkaleybar
Negar Kiyavash
Kun Zhang
CML
34
22
0
05 Feb 2018
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
24
55
0
03 Mar 2017
Improving Accuracy and Scalability of the PC Algorithm by Maximizing
  P-value
Improving Accuracy and Scalability of the PC Algorithm by Maximizing P-value
Joseph Ramsey
15
14
0
03 Oct 2016
Complete Graphical Characterization and Construction of Adjustment Sets
  in Markov Equivalence Classes of Ancestral Graphs
Complete Graphical Characterization and Construction of Adjustment Sets in Markov Equivalence Classes of Ancestral Graphs
Emilija Perković
J. Textor
M. Kalisch
Marloes H. Maathuis
OffRL
15
140
0
22 Jun 2016
Causality on Longitudinal Data: Stable Specification Search in
  Constrained Structural Equation Modeling
Causality on Longitudinal Data: Stable Specification Search in Constrained Structural Equation Modeling
R. Rahmadi
P. Groot
Marieke HC van Rijn
Jan AJG van den Brand
M. Heins
H. Knoop
Tom Heskes
CML
11
15
0
22 May 2016
High-dimensional consistency in score-based and hybrid structure
  learning
High-dimensional consistency in score-based and hybrid structure learning
Preetam Nandy
Alain Hauser
Marloes H. Maathuis
37
128
0
09 Jul 2015
Scoring and Searching over Bayesian Networks with Causal and Associative
  Priors
Scoring and Searching over Bayesian Networks with Causal and Associative Priors
Giorgos Borboudakis
Ioannis Tsamardinos
CML
43
14
0
09 Aug 2014
Bayesian Network Constraint-Based Structure Learning Algorithms:
  Parallel and Optimised Implementations in the bnlearn R Package
Bayesian Network Constraint-Based Structure Learning Algorithms: Parallel and Optimised Implementations in the bnlearn R Package
M. Scutari
CML
44
164
0
30 Jun 2014
A Transformational Characterization of Equivalent Bayesian Network
  Structures
A Transformational Characterization of Equivalent Bayesian Network Structures
D. M. Chickering
145
415
0
20 Feb 2013
Causal Discovery from Changes
Causal Discovery from Changes
Jin Tian
Judea Pearl
CML
52
163
0
10 Jan 2013
Enumerating Markov Equivalence Classes of Acyclic Digraph Models
Enumerating Markov Equivalence Classes of Acyclic Digraph Models
S. Gillispie
M. Perlman
58
102
0
10 Jan 2013
Incorporating Causal Prior Knowledge as Path-Constraints in Bayesian
  Networks and Maximal Ancestral Graphs
Incorporating Causal Prior Knowledge as Path-Constraints in Bayesian Networks and Maximal Ancestral Graphs
Giorgos Borboudakis
Ioannis Tsamardinos
47
37
0
27 Jun 2012
Causal discovery of linear acyclic models with arbitrary distributions
Causal discovery of linear acyclic models with arbitrary distributions
P. Hoyer
Aapo Hyvarinen
R. Scheines
Peter Spirtes
Joseph Ramsey
Gustavo Lacerda
Shohei Shimizu
CML
61
81
0
13 Jun 2012
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