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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 21 - 30 of 181
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Estimating complier average causal effects for clustered RCTs when the treatment affects the service population
Schochet, Peter Z. - In: Journal of Causal Inference 10 (2022) 1, pp. 300-334
Abstract Randomized controlled trials (RCTs) sometimes test interventions that aim to improve existing services targeted to a subset of individuals identified after randomization. Accordingly, the treatment could affect the composition of service recipients and the offered services. With such...
Persistent link: https://www.econbiz.de/10014610934
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Sensitivity analysis for causal effects with generalized linear models
Sjölander, Arvid; Gabriel, Erin E.; … - In: Journal of Causal Inference 10 (2022) 1, pp. 441-479
Abstract Residual confounding is a common source of bias in observational studies. In this article, we build upon a series of sensitivity analyses methods for residual confounding developed by Brumback et al. and Chiba whose sensitivity parameters are constructed to quantify deviation from...
Persistent link: https://www.econbiz.de/10014610935
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Causation and decision: On Dawid’s “Decision theoretic foundation of statistical causality”
Pearl, Judea - In: Journal of Causal Inference 10 (2022) 1, pp. 221-226
Abstract In a recent issue of this journal, Philip Dawid (2021) proposes a framework for causal inference that is based on statistical decision theory and that is, in many aspects, compatible with the familiar framework of causal graphs (e.g., Directed Acyclic Graphs (DAGs)). This editorial...
Persistent link: https://www.econbiz.de/10014610936
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Bias attenuation results for dichotomization of a continuous confounder
Gabriel, Erin E.; Peña, Jose M.; Sjölander, Arvid - In: Journal of Causal Inference 10 (2022) 1, pp. 515-526
Abstract It is well-known that dichotomization can cause bias and loss of efficiency in estimation. One can easily construct examples where adjusting for a dichotomized confounder causes bias in causal estimation. There are additional examples in the literature where adjusting for a dichotomized...
Persistent link: https://www.econbiz.de/10014610937
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Decision-theoretic foundations for statistical causality: Response to Pearl
Dawid, Philip - In: Journal of Causal Inference 10 (2022) 1, pp. 296-299
Abstract I thank Judea Pearl for his discussion of my paper and respond to the points he raises. In particular, his attachment to unaugmented directed acyclic graphs has led to a misapprehension of my own proposals. I also discuss the possibilities for developing a non-manipulative understanding...
Persistent link: https://www.econbiz.de/10014610938
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A fundamental measure of treatment effect heterogeneity
Levy, Jonathan; van der Laan, Mark; Hubbard, Alan; … - In: Journal of Causal Inference 9 (2021) 1, pp. 83-108
Abstract The stratum-specific treatment effect function is a random variable giving the average treatment effect (ATE) for a randomly drawn stratum of potential confounders a clinician may use to assign treatment. In addition to the ATE, the variance of the stratum-specific treatment effect...
Persistent link: https://www.econbiz.de/10014610883
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Two seemingly paradoxical results in linear models: the variance inflation factor and the analysis of covariance
Ding, Peng - In: Journal of Causal Inference 9 (2021) 1, pp. 1-8
Abstract A result from a standard linear model course is that the variance of the ordinary least squares (OLS) coefficient of a variable will never decrease when including additional covariates into the regression. The variance inflation factor (VIF) measures the increase of the variance....
Persistent link: https://www.econbiz.de/10014610890
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Identification of causal intervention effects under contagion
Cai, Xiaoxuan; Loh, Wen Wei; Crawford, Forrest W. - In: Journal of Causal Inference 9 (2021) 1, pp. 9-38
Abstract Defining and identifying causal intervention effects for transmissible infectious disease outcomes is challenging because a treatment – such as a vaccine – given to one individual may affect the infection outcomes of others. Epidemiologists have proposed causal estimands to quantify...
Persistent link: https://www.econbiz.de/10014610893
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Estimating causal effects with the neural autoregressive density estimator
Garrido, Sergio; Borysov, Stanislav; Rich, Jeppe; … - In: Journal of Causal Inference 9 (2021) 1, pp. 211-228
Abstract The estimation of causal effects is fundamental in situations where the underlying system will be subject to active interventions. Part of building a causal inference engine is defining how variables relate to each other, that is, defining the functional relationship between variables...
Persistent link: https://www.econbiz.de/10014610896
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Decision-theoretic foundations for statistical causality
Dawid, Philip - In: Journal of Causal Inference 9 (2021) 1, pp. 39-77
Abstract We develop a mathematical and interpretative foundation for the enterprise of decision-theoretic (DT) statistical causality, which is a straightforward way of representing and addressing causal questions. DT reframes causal inference as “assisted decision-making” and aims to...
Persistent link: https://www.econbiz.de/10014610897
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