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Identifying Causal-Effect Inference Failure with Uncertainty-Aware
  Models
v1v2 (latest)

Identifying Causal-Effect Inference Failure with Uncertainty-Aware Models

1 July 2020
Andrew Jesson
Sören Mindermann
Uri Shalit
Y. Gal
    CML
ArXiv (abs)PDFHTML

Papers citing "Identifying Causal-Effect Inference Failure with Uncertainty-Aware Models"

28 / 28 papers shown
Title
CausalPFN: Amortized Causal Effect Estimation via In-Context Learning
CausalPFN: Amortized Causal Effect Estimation via In-Context Learning
Vahid Balazadeh
Hamidreza Kamkari
Valentin Thomas
Benson Li
Junwei Ma
Jesse C. Cresswell
Rahul G. Krishnan
CML
15
0
0
09 Jun 2025
Enhancing Treatment Effect Estimation via Active Learning: A Counterfactual Covering Perspective
Enhancing Treatment Effect Estimation via Active Learning: A Counterfactual Covering Perspective
Hechuan Wen
Tong Chen
Mingming Gong
Li Kheng Chai
S. Sadiq
Hongzhi Yin
CML
86
0
0
08 May 2025
Your Assumed DAG is Wrong and Here's How To Deal With It
Kirtan Padh
Zhufeng Li
Cecilia Casolo
Niki Kilbertus
CML
101
0
0
24 Feb 2025
Quantifying Aleatoric Uncertainty of the Treatment Effect: A Novel Orthogonal Learner
Quantifying Aleatoric Uncertainty of the Treatment Effect: A Novel Orthogonal Learner
Valentyn Melnychuk
Stefan Feuerriegel
Mihaela van der Schaar
CML
272
5
0
05 Nov 2024
Conformal Prediction for Causal Effects of Continuous Treatments
Conformal Prediction for Causal Effects of Continuous Treatments
Maresa Schröder
Dennis Frauen
Jonas Schweisthal
Konstantin Heß
Valentyn Melnychuk
Stefan Feuerriegel
157
9
0
03 Jul 2024
Conformal Counterfactual Inference under Hidden Confounding
Conformal Counterfactual Inference under Hidden Confounding
Zonghao Chen
Ruocheng Guo
Jean-François Ton
Yang Liu
CMLOffRL
214
3
0
20 May 2024
Bounds on Representation-Induced Confounding Bias for Treatment Effect
  Estimation
Bounds on Representation-Induced Confounding Bias for Treatment Effect Estimation
Valentyn Melnychuk
Dennis Frauen
Stefan Feuerriegel
CML
79
10
0
19 Nov 2023
Ensembled Prediction Intervals for Causal Outcomes Under Hidden
  Confounding
Ensembled Prediction Intervals for Causal Outcomes Under Hidden Confounding
Myrl G. Marmarelis
Greg Ver Steeg
Aram Galstyan
Fred Morstatter
CMLOOD
97
5
0
15 Jun 2023
Reliable Off-Policy Learning for Dosage Combinations
Reliable Off-Policy Learning for Dosage Combinations
Jonas Schweisthal
Dennis Frauen
Valentyn Melnychuk
Stefan Feuerriegel
OffRL
57
12
0
31 May 2023
Measuring axiomatic soundness of counterfactual image models
Measuring axiomatic soundness of counterfactual image models
M. Monteiro
Fabio De Sousa Ribeiro
Nick Pawlowski
Daniel Coelho De Castro
Ben Glocker
117
29
0
02 Mar 2023
Towards Dependable Autonomous Systems Based on Bayesian Deep Learning
  Components
Towards Dependable Autonomous Systems Based on Bayesian Deep Learning Components
F. Arnez
H. Espinoza
A. Radermacher
F. Terrier
UQCV
57
5
0
12 Jan 2023
Continuous-Time Modeling of Counterfactual Outcomes Using Neural
  Controlled Differential Equations
Continuous-Time Modeling of Counterfactual Outcomes Using Neural Controlled Differential Equations
Nabeel Seedat
F. Imrie
Alexis Bellot
Zhaozhi Qian
M. Schaar
OODCML
57
52
0
16 Jun 2022
Quantifying and Using System Uncertainty in UAV Navigation
Quantifying and Using System Uncertainty in UAV Navigation
F. Arnez
A. Radermacher
H. Espinoza
BDLUQCV
54
4
0
04 Jun 2022
Predicting the impact of treatments over time with uncertainty aware
  neural differential equations
Predicting the impact of treatments over time with uncertainty aware neural differential equations
E. Brouwer
J. Hernández
Stephanie L. Hyland
OODCML
55
26
0
24 Feb 2022
Selective Regression Under Fairness Criteria
Selective Regression Under Fairness Criteria
Abhin Shah
Yuheng Bu
Joshua K. Lee
Subhro Das
Yikang Shen
P. Sattigeri
G. Wornell
114
28
0
28 Oct 2021
Using Non-Linear Causal Models to Study Aerosol-Cloud Interactions in
  the Southeast Pacific
Using Non-Linear Causal Models to Study Aerosol-Cloud Interactions in the Southeast Pacific
Andrew Jesson
P. Manshausen
A. Douglas
D. Watson‐Parris
Y. Gal
P. Stier
AI4Cl
129
7
0
28 Oct 2021
$β$-Intact-VAE: Identifying and Estimating Causal Effects under
  Limited Overlap
βββ-Intact-VAE: Identifying and Estimating Causal Effects under Limited Overlap
Pengzhou (Abel) Wu
Kenji Fukumizu
CML
77
15
0
11 Oct 2021
Estimating Potential Outcome Distributions with Collaborating Causal
  Networks
Estimating Potential Outcome Distributions with Collaborating Causal Networks
Tianhui Zhou
William E Carson IV
David Carlson
CML
208
8
0
04 Oct 2021
Uncertainty Estimation and Out-of-Distribution Detection for
  Counterfactual Explanations: Pitfalls and Solutions
Uncertainty Estimation and Out-of-Distribution Detection for Counterfactual Explanations: Pitfalls and Solutions
Eoin Delaney
Derek Greene
Mark T. Keane
74
26
0
20 Jul 2021
Measuring and Improving Model-Moderator Collaboration using Uncertainty
  Estimation
Measuring and Improving Model-Moderator Collaboration using Uncertainty Estimation
Ian D Kivlichan
Zi Lin
J. Liu
Lucy Vasserman
49
20
0
09 Jul 2021
Causal Effect Inference for Structured Treatments
Causal Effect Inference for Structured Treatments
Jean Kaddour
Yuchen Zhu
Qi Liu
Matt J. Kusner
Ricardo M. A. Silva
CML
262
51
0
03 Jun 2021
Quantifying Ignorance in Individual-Level Causal-Effect Estimates under
  Hidden Confounding
Quantifying Ignorance in Individual-Level Causal-Effect Estimates under Hidden Confounding
Andrew Jesson
Sören Mindermann
Y. Gal
Uri Shalit
CML
90
56
0
08 Mar 2021
On Feature Collapse and Deep Kernel Learning for Single Forward Pass
  Uncertainty
On Feature Collapse and Deep Kernel Learning for Single Forward Pass Uncertainty
Joost R. van Amersfoort
Lewis Smith
Andrew Jesson
Oscar Key
Y. Gal
UQCV
79
104
0
22 Feb 2021
Conditional Distributional Treatment Effect with Kernel Conditional Mean
  Embeddings and U-Statistic Regression
Conditional Distributional Treatment Effect with Kernel Conditional Mean Embeddings and U-Statistic Regression
Junhyung Park
Uri Shalit
Bernhard Schölkopf
Krikamol Muandet
CML
104
33
0
16 Feb 2021
A Critical Look at the Consistency of Causal Estimation With Deep Latent
  Variable Models
A Critical Look at the Consistency of Causal Estimation With Deep Latent Variable Models
Severi Rissanen
Pekka Marttinen
CML
183
28
0
12 Feb 2021
A Review of Uncertainty Quantification in Deep Learning: Techniques,
  Applications and Challenges
A Review of Uncertainty Quantification in Deep Learning: Techniques, Applications and Challenges
Moloud Abdar
Farhad Pourpanah
Sadiq Hussain
Dana Rezazadegan
Li Liu
...
Xiaochun Cao
Abbas Khosravi
U. Acharya
V. Makarenkov
S. Nahavandi
BDLUQCV
355
1,945
0
12 Nov 2020
Targeted VAE: Variational and Targeted Learning for Causal Inference
Targeted VAE: Variational and Targeted Learning for Causal Inference
M. Vowels
Necati Cihan Camgöz
Richard Bowden
BDLOODCML
47
8
0
28 Sep 2020
Automated versus do-it-yourself methods for causal inference: Lessons
  learned from a data analysis competition
Automated versus do-it-yourself methods for causal inference: Lessons learned from a data analysis competition
Vincent Dorie
J. Hill
Uri Shalit
M. Scott
D. Cervone
CML
263
288
0
09 Jul 2017
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