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. 2505.20697
  4. Cited By
Generating Hypotheses of Dynamic Causal Graphs in Neuroscience: Leveraging Generative Factor Models of Observed Time Series

Generating Hypotheses of Dynamic Causal Graphs in Neuroscience: Leveraging Generative Factor Models of Observed Time Series

27 May 2025
Zachary C. Brown
David Carlson
    CML
    AI4CE
ArXivPDFHTML

Papers citing "Generating Hypotheses of Dynamic Causal Graphs in Neuroscience: Leveraging Generative Factor Models of Observed Time Series"

13 / 13 papers shown
Title
Adjustment Identification Distance: A gadjid for Causal Structure
  Learning
Adjustment Identification Distance: A gadjid for Causal Structure Learning
Leonard Henckel
Theo Würtzen
Sebastian Weichwald
CML
55
9
0
13 Feb 2024
Multiscale Causal Structure Learning
Multiscale Causal Structure Learning
Gabriele DÁcunto
P. Lorenzo
Sergio Barbarossa
73
6
0
16 Jul 2022
Causal Discovery from Conditionally Stationary Time Series
Causal Discovery from Conditionally Stationary Time Series
Carles Balsells-Rodas
Ruibo Tu
Tanmayee Narendra
Yingzhen Li
Gabriele Schweikert
Hedvig Kjellström
Yingzhen Li
AI4TS
BDL
CML
123
6
0
12 Oct 2021
Granger Causality: A Review and Recent Advances
Granger Causality: A Review and Recent Advances
Ali Shojaie
E. Fox
CML
AI4TS
65
269
0
05 May 2021
Neural Additive Vector Autoregression Models for Causal Discovery in
  Time Series
Neural Additive Vector Autoregression Models for Causal Discovery in Time Series
Bart Bussmann
Jannes Nys
Steven Latré
CML
BDL
27
25
0
19 Oct 2020
High-recall causal discovery for autocorrelated time series with latent
  confounders
High-recall causal discovery for autocorrelated time series with latent confounders
Andreas Gerhardus
J. Runge
CML
AI4TS
48
102
0
03 Jul 2020
Estimating a Brain Network Predictive of Stress and Genotype with
  Supervised Autoencoders
Estimating a Brain Network Predictive of Stress and Genotype with Supervised Autoencoders
Austin Talbot
David B. Dunson
K. Dzirasa
David Carlson
13
4
0
10 Apr 2020
Discovering contemporaneous and lagged causal relations in
  autocorrelated nonlinear time series datasets
Discovering contemporaneous and lagged causal relations in autocorrelated nonlinear time series datasets
Jakob Runge
57
193
0
07 Mar 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
73
27
0
21 Feb 2020
Causal Discovery and Forecasting in Nonstationary Environments with
  State-Space Models
Causal Discovery and Forecasting in Nonstationary Environments with State-Space Models
Erdun Gao
Kun Zhang
Biwei Huang
Clark Glymour
CML
AI4TS
55
64
0
26 May 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
71
486
0
22 Apr 2019
What can be estimated? Identifiability, estimability, causal inference
  and ill-posed inverse problems
What can be estimated? Identifiability, estimability, causal inference and ill-posed inverse problems
Oliver J. Maclaren
R. Nicholson
49
35
0
04 Apr 2019
Bayesian Nonparametric Inference of Switching Linear Dynamical Systems
Bayesian Nonparametric Inference of Switching Linear Dynamical Systems
E. Fox
Erik B. Sudderth
Michael I. Jordan
A. Willsky
86
244
0
19 Mar 2010
1