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  • Search: isPartOf:"Journal of Causal Inference"
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Year of publication
Subject
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causal inference 39 confounding 13 counterfactuals 7 mediation 7 TMLE 6 average treatment effect 6 propensity score 6 Causal inference 5 sensitivity analysis 5 transportability 5 causal effects 4 double robustness 4 external validity 4 generalizability 4 graphical models 4 instrumental variables 4 bias 3 causal effect 3 causality 3 covariate balance 3 efficient influence curve 3 extended conditional independence 3 ignorability 3 interference 3 machine learning 3 optimization 3 potential outcomes 3 stochastic intervention 3 Causal Inference 2 Manipulability 2 SUTVA 2 Sensitivity Analysis 2 Sensitivity analysis 2 Simpson’s paradox 2 average causal effect 2 bias amplification 2 bounds 2 causal diagrams 2 causal inference with latent variables 2 conditional independence 2
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Online availability
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Free 113 CC license 98 Undetermined 68
Type of publication
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Article 181
Type of publication (narrower categories)
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research-article 128 article-commentary 5 frontmatter 5 editorial 3 erratum 2 review-article 2 corrigenda 1 other 1
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Language
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English 147 Undetermined 34
Author
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Pearl, Judea 21 van der Laan, Mark J. 9 Judea, Pearl 8 Ding, Peng 5 Miratrix, Luke W. 5 Peña, Jose M. 5 Sjölander, Arvid 5 Gabriel, Erin E. 4 VanderWeele, Tyler J. 4 van der Laan Mark J. 4 Dawid, Philip 3 Ghosh, Debashis 3 Griffin, Beth Ann 3 Small, Dylan S. 3 Yang, Shu 3 Zhu, Yeying 3 van der Laan, Mark 3 Aronow, Peter M. 2 Benkeser, David 2 Chambaz, Antoine 2 Chiba, Yasutaka 2 Dasgupta, Tirthankar 2 Ertefaie, Ashkan 2 Gilbert, Peter B. 2 Gruber, Susan 2 Hennessy, Jonathan 2 Hubbard, Alan 2 Janzing, Dominik 2 Kallus, Nathan 2 Kuroki, Manabu 2 Maya, Petersen 2 Miratrix, Luke 2 Neugebauer, Romain 2 Pattanayak, Cassandra 2 Peters, Jonas 2 Petersen, Maya 2 Robeva, Elina 2 Santacatterina, Michele 2 Schochet, Peter Z. 2 Schomaker, Michael 2
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Published in...
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Journal of Causal Inference 181
Source
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Other ZBW resources 156 RePEc 25
Showing 61 - 70 of 181
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Technical Considerations in the Use of the E-Value
VanderWeele, Tyler J.; Ding, Peng; Mathur, Maya - In: Journal of Causal Inference 7 (2019) 2
Abstract The E-value is defined as the minimum strength of association on the risk ratio scale that an unmeasured confounder would have to have with both the exposure and the outcome, conditional on the measured covariates, to explain away the observed exposure-outcome association. We have...
Persistent link: https://www.econbiz.de/10014610871
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Estimating Mann–Whitney-Type Causal Effects for Right-Censored Survival Outcomes
Zhang, Zhiwei; Liu, Chunling; Ma, Shujie; Zhang, Min - In: Journal of Causal Inference 7 (2019) 1
Abstract Mann–Whitney-type causal effects are clinically relevant, easy to interpret, and readily applicable to a wide range of study settings. This article considers estimation of such effects when the outcome variable is a survival time subject to right censoring. We derive and discuss...
Persistent link: https://www.econbiz.de/10014610873
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Learning Heterogeneity in Causal Inference Using Sufficient Dimension Reduction
Luo, Wei; Wu, Wenbo; Zhu, Yeying - In: Journal of Causal Inference 7 (2019) 1
Abstract Often the research interest in causal inference is on the regression causal effect, which is the mean difference in the potential outcomes conditional on the covariates. In this paper, we use sufficient dimension reduction to estimate a lower dimensional linear combination of the...
Persistent link: https://www.econbiz.de/10014610874
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A Falsifiability Characterization of Double Robustness Through Logical Operators
Frangakis, Constantine - In: Journal of Causal Inference 7 (2019) 1
Abstract We address the characterization of problems in which a consistent estimator exists in a union of two models, also termed as a doubly robust estimator. Such estimators are important in missing information, including causal inference problems. Existing characterizations, based on the...
Persistent link: https://www.econbiz.de/10014610875
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Approximate Kernel-Based Conditional Independence Tests for Fast Non-Parametric Causal Discovery
Strobl, Eric V.; Zhang, Kun; Visweswaran, Shyam - In: Journal of Causal Inference 7 (2019) 1
Abstract Constraint-based causal discovery (CCD) algorithms require fast and accurate conditional independence (CI) testing. The Kernel Conditional Independence Test (KCIT) is currently one of the most popular CI tests in the non-parametric setting, but many investigators cannot use KCIT with...
Persistent link: https://www.econbiz.de/10014610876
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Estimating Causal Effects of New Treatments Despite Self-Selection: The Case of Experimental Medical Treatments
Hazlett, Chad - In: Journal of Causal Inference 7 (2019) 1
Abstract Providing terminally ill patients with access to experimental treatments, as allowed by recent “right to try” laws and “expanded access” programs, poses a variety of ethical questions. While practitioners and investigators may assume it is impossible to learn the effects of...
Persistent link: https://www.econbiz.de/10014610877
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A Gaussian Process Framework for Overlap and Causal Effect Estimation with High-Dimensional Covariates
Ghosh, Debashis; Cruz Cortés, Efrén - In: Journal of Causal Inference 7 (2019) 2
Abstract A powerful tool for the analysis of nonrandomized observational studies has been the potential outcomes model. Utilization of this framework allows analysts to estimate average treatment effects. This article considers the situation in which high-dimensional covariates are present and...
Persistent link: https://www.econbiz.de/10014610878
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Regression Adjustments for Estimating the Global Treatment Effect in Experiments with Interference
Chin, Alex - In: Journal of Causal Inference 7 (2019) 2
Abstract Standard estimators of the global average treatment effect can be biased in the presence of interference. This paper proposes regression adjustment estimators for removing bias due to interference in Bernoulli randomized experiments. We use a fitted model to predict the counterfactual...
Persistent link: https://www.econbiz.de/10014610879
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Unifying Gaussian LWF and AMP Chain Graphs to Model Interference
Peña, Jose M. - In: Journal of Causal Inference 8 (2019) 1, pp. 1-21
Abstract An intervention may have an effect on units other than those to which it was administered. This phenomenon is called interference and it usually goes unmodeled. In this paper, we propose to combine Lauritzen-Wermuth-Frydenberg and Andersson-Madigan-Perlman chain graphs to create a new...
Persistent link: https://www.econbiz.de/10014610880
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Sufficient Causes: On Oxygen, Matches, and Fires
Pearl, Judea - In: Journal of Causal Inference 7 (2019) 2
Abstract We demonstrate how counterfactuals can be used to compute the probability that one event was/is a sufficient cause of another, and how counterfactuals emerge organically from basic scientific knowledge, rather than manipulative experiments. We contrast this demonstration with the...
Persistent link: https://www.econbiz.de/10014610892
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