Literature DB >> 33240555

Identification in Causal Models With Hidden Variables.

Ilya Shpitser1.   

Abstract

Targets of inference that establish causality are phrased in terms of counterfactual responses to interventions. These potential outcomes operationalize cause effect relationships by means of comparisons of cases and controls in hypothetical randomized controlled experiments. In many applied settings, data on such experiments is not directly available, necessitating assumptions linking the counterfactual target of inference with the factual observed data distribution. This link is provided by causal models. Originally defined on potential outcomes directly (Rubin, 1976), causal models have been extended to longitudinal settings (Robins, 1986), and reformulated as graphical models (Spirtes et al., 2001; Pearl, 2009). In settings where common causes of all observed variables are themselves observed, many causal inference targets are identified via variations of the expression referred to in the literature as the g-formula (Robins, 1986), the manipulated distribution (Spirtes et al., 2001), or the truncated factorization (Pearl, 2009). In settings where hidden variables are present, identification results become considerably more complicated. In this manuscript, we review identification theory in causal models with hidden variables for common targets that arise in causal inference applications, including causal effects, direct, indirect, and path-specific effects, and outcomes of dynamic treatment regimes. We will describe a simple formulation of this theory (Tian and Pearl, 2002; Shpitser and Pearl, 2006b,a; Tian, 2008; Shpitser, 2013) in terms of causal graphical models, and the fixing operator, a statistical analogue of the intervention operation (Richardson et al., 2017).

Entities:  

Keywords:  60E05; 62H99; causal inference; graphical models; identification

Year:  2020        PMID: 33240555      PMCID: PMC7685307     

Source DB:  PubMed          Journal:  J Soc Fr Statistique (2009)        ISSN: 1962-5197


  6 in total

1.  Identifiability and exchangeability for direct and indirect effects.

Authors:  J M Robins; S Greenland
Journal:  Epidemiology       Date:  1992-03       Impact factor: 4.822

2.  Counterfactual graphical models for longitudinal mediation analysis with unobserved confounding.

Authors:  Ilya Shpitser
Journal:  Cogn Sci       Date:  2013-07-30

3.  Identification of Personalized Effects Associated With Causal Pathways.

Authors:  Ilya Shpitser; Eli Sherman
Journal:  Uncertain Artif Intell       Date:  2018-08

4.  CAUSAL INFERENCE WITH A GRAPHICAL HIERARCHY OF INTERVENTIONS.

Authors:  Ilya Shpitser; Eric Tchetgen Tchetgen
Journal:  Ann Stat       Date:  2016-11-23       Impact factor: 4.028

5.  Quantifying an Adherence Path-Specific Effect of Antiretroviral Therapy in the Nigeria PEPFAR Program.

Authors:  Caleb H Miles; Ilya Shpitser; Phyllis Kanki; Seema Meloni; Eric J Tchetgen Tchetgen
Journal:  J Am Stat Assoc       Date:  2018-01-26       Impact factor: 5.033

6.  A Potential Outcomes Calculus for Identifying Conditional Path-Specific Effects.

Authors:  Daniel Malinsky; Ilya Shpitser; Thomas Richardson
Journal:  Proc Mach Learn Res       Date:  2019-04
  6 in total

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