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Machine learning for causal inference: on the use of cross-fit
  estimators
v1v2v3v4 (latest)

Machine learning for causal inference: on the use of cross-fit estimators

21 April 2020
P. Zivich
A. Breskin
    CMLOOD
ArXiv (abs)PDFHTML

Papers citing "Machine learning for causal inference: on the use of cross-fit estimators"

9 / 9 papers shown
Title
Generalized coarsened confounding for causal effects: a large-sample framework
Generalized coarsened confounding for causal effects: a large-sample framework
Debashis Ghosh
Lei Wang
CML
57
0
0
06 Jan 2025
Performance of Cross-Validated Targeted Maximum Likelihood Estimation
Performance of Cross-Validated Targeted Maximum Likelihood Estimation
Matthew J. Smith
Rachael V. Phillips
C. Maringe
Miguel Angel Luque-Fernandez
51
1
0
17 Sep 2024
Graph Machine Learning based Doubly Robust Estimator for Network Causal
  Effects
Graph Machine Learning based Doubly Robust Estimator for Network Causal Effects
Seyedeh Baharan Khatami
Harsh Parikh
Haowei Chen
Sudeepa Roy
Babak Salimi
OOD
86
1
0
17 Mar 2024
Efficient adjustment for complex covariates: Gaining efficiency with
  DOPE
Efficient adjustment for complex covariates: Gaining efficiency with DOPE
Alexander Mangulad Christgau
Niels Richard Hansen
93
3
0
20 Feb 2024
CausalMetaR: An R package for performing causally interpretable
  meta-analyses
CausalMetaR: An R package for performing causally interpretable meta-analyses
Guanbo Wang
Sean McGrath
Yi Lian
CML
94
1
0
06 Feb 2024
Application of targeted maximum likelihood estimation in public health
  and epidemiological studies: a systematic review
Application of targeted maximum likelihood estimation in public health and epidemiological studies: a systematic review
Matthew J. Smith
Rachael V. Phillips
M. Luque-Fernández
C. Maringe
OOD
56
22
0
13 Mar 2023
Meta-Learners for Estimation of Causal Effects: Finite Sample Cross-Fit
  Performance
Meta-Learners for Estimation of Causal Effects: Finite Sample Cross-Fit Performance
Gabriel Okasa
CML
55
6
0
30 Jan 2022
Causal Bias Quantification for Continuous Treatments
Causal Bias Quantification for Continuous Treatments
Gianluca Detommaso
Michael Bruckner
Philip Schulz
Victor Chernozhukov
CML
91
0
0
17 Jun 2021
Tutorial: Introduction to computational causal inference using
  reproducible Stata, R and Python code
Tutorial: Introduction to computational causal inference using reproducible Stata, R and Python code
Matthew J. Smith
C. Maringe
B. Rachet
M. Mansournia
P. Zivich
Stephen R. Cole
M. Luque-Fernández
CML
22
2
0
17 Dec 2020
1