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Causal Modeling of Dynamical Systems
v1v2v3v4 (latest)

Causal Modeling of Dynamical Systems

23 March 2018
Stephan Bongers
Tineke Blom
Joris M. Mooij
ArXiv (abs)PDFHTML

Papers citing "Causal Modeling of Dynamical Systems"

19 / 19 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
CMLAI4CE
87
0
0
22 May 2025
When Counterfactual Reasoning Fails: Chaos and Real-World Complexity
When Counterfactual Reasoning Fails: Chaos and Real-World Complexity
Yahya Aalaila
Gerrit Großmann
Sumantrak Mukherjee
Jonas Wahl
Sebastian Vollmer
CMLLRM
117
0
0
31 Mar 2025
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
CMLBDL
203
12
0
28 Feb 2024
RODE-Net: Learning Ordinary Differential Equations with Randomness from
  Data
RODE-Net: Learning Ordinary Differential Equations with Randomness from Data
Junyu Liu
Zichao Long
Ranran Wang
Jie Sun
Bin Dong
36
9
0
03 Jun 2020
Constraint-Based Causal Discovery using Partial Ancestral Graphs in the
  presence of Cycles
Constraint-Based Causal Discovery using Partial Ancestral Graphs in the presence of Cycles
Joris M. Mooij
Tom Claassen
58
42
0
01 May 2020
Causal Calculus in the Presence of Cycles, Latent Confounders and
  Selection Bias
Causal Calculus in the Presence of Cycles, Latent Confounders and Selection Bias
Patrick Forré
Joris M. Mooij
CML
69
32
0
02 Jan 2019
Learning stable and predictive structures in kinetic systems: Benefits
  of a causal approach
Learning stable and predictive structures in kinetic systems: Benefits of a causal approach
Niklas Pfister
Stefan Bauer
J. Peters
CML
29
41
0
28 Oct 2018
Markov Properties for Graphical Models with Cycles and Latent Variables
Markov Properties for Graphical Models with Cycles and Latent Variables
Patrick Forré
Joris M. Mooij
54
73
0
24 Oct 2017
From Deterministic ODEs to Dynamic Structural Causal Models
From Deterministic ODEs to Dynamic Structural Causal Models
Paul Kishan Rubenstein
Stephan Bongers
Bernhard Schölkopf
Joris M. Mooij
73
54
0
29 Aug 2016
From Ordinary Differential Equations to Structural Causal Models: the
  deterministic case
From Ordinary Differential Equations to Structural Causal Models: the deterministic case
Joris Mooij
Dominik Janzing
Bernhard Schölkopf
111
105
0
09 Aug 2014
Axiomatizing Causal Reasoning
Axiomatizing Causal Reasoning
Joseph Y. Halpern
LRM
120
314
0
07 Aug 2014
Causal interpretation of stochastic differential equations
Causal interpretation of stochastic differential equations
Alexander Sokol
N. Hansen
CML
139
50
0
31 Mar 2013
Dynamic Network Models for Forecasting
Dynamic Network Models for Forecasting
P. Dagum
Adam Galper
Eric Horvitz
AI4TS
115
230
0
13 Mar 2013
Causal Inference in the Presence of Latent Variables and Selection Bias
Causal Inference in the Presence of Latent Variables and Selection Bias
Peter Spirtes
Christopher Meek
Thomas S. Richardson
CML
194
444
0
20 Feb 2013
Causal Reasoning in Graphical Time Series Models
Causal Reasoning in Graphical Time Series Models
M. Eichler
Vanessa Didelez
CMLAI4TS
72
63
0
20 Jun 2012
Discovering Cyclic Causal Models by Independent Components Analysis
Discovering Cyclic Causal Models by Independent Components Analysis
Gustavo Lacerda
Peter Spirtes
Joseph Ramsey
P. Hoyer
CML
104
187
0
13 Jun 2012
Learning Why Things Change: The Difference-Based Causality Learner
Learning Why Things Change: The Difference-Based Causality Learner
M. Voortman
D. Dash
Marek J Druzdzel
CML
86
41
0
15 Mar 2012
On Deducing Conditional Independence from d-Separation in Causal Graphs
  with Feedback (Research Note)
On Deducing Conditional Independence from d-Separation in Causal Graphs with Feedback (Research Note)
Radford M. Neal
CML
75
52
0
01 Jun 2011
Graphical models for marked point processes based on local independence
Graphical models for marked point processes based on local independence
Vanessa Didelez
110
165
0
31 Oct 2007
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