- Pfad:
-
Bias formulas for violations of proximal identification assumptions in a linear structural equation model
Dateien
Externe Ressourcen
Zeitschrift
- Titel:
- Journal of causal inference
- Erschienen:
-
Berlin: de Gruyter
- Fußnote:
- Gesehen am 28.07.14
- Open Access
- Namensnennung 4.0 International
- C!z LF gelöscht(28-07-14)
- Umfang:
- Online-Ressource
- ISSN:
- 2193-3685
- ZDB-ID:
-
2742570-8
- Schlagworte:
- Zeitschrift
- ZLB-Systematik:
- Mathematik
- Wirtschaft
- Sammlung:
- Mathematik
- Wirtschaft
- Copyright:
- Rechte vorbehalten
- Zugriffsberechtigung:
- Freier Zugang
- Titel:
- Journal of causal inference
- Erschienen:
-
Berlin: de Gruyter
- Fußnote:
- Gesehen am 28.07.14
- Open Access
- Namensnennung 4.0 International
- C!z LF gelöscht(28-07-14)
- Umfang:
- Online-Ressource
- ISSN:
- 2193-3685
- ZDB-ID:
-
2742570-8
- Schlagworte:
- Zeitschrift
- ZLB-Systematik:
- Mathematik
- Wirtschaft
- Sammlung:
- Mathematik
- Wirtschaft
- Copyright:
- Rechte vorbehalten
- Zugriffsberechtigung:
- Freier Zugang
Aufsatz
- Titel:
- Bias formulas for violations of proximal identification assumptions in a linear structural equation model
- Erschienen:
-
Berlin: de Gruyter, 2024
- Sprache:
- Englisch
- Zusammenfassung:
- Abstract: Causal inference from observational data often rests on the unverifiable assumption of no unmeasured confounding. Recently, Tchetgen Tchetgen and colleagues have introduced proximal inference to leverage negative control outcomes and exposures as proxies to adjust for bias from unmeasured confounding. However, some of the key assumptions that proximal inference relies on are themselves empirically untestable. In addition, the impact of violations of proximal inference assumptions on the bias of effect estimates is not well understood. In this article, we derive bias formulas for proximal inference estimators under a linear structural equation model. These results are a first step toward sensitivity analysis and quantitative bias analysis of proximal inference estimators. While limited to a particular family of data generating processes, our results may offer some more general insight into the behavior of proximal inference estimators.
- Umfang:
- Online-Ressource
- Fußnote:
- Open Access
- Archivierung/Langzeitarchivierung gewährleistet
- Schlagworte:
- proximal causal inference ; sensitivity analysis ; bias analysis ; negative control ; 62D20
- ZLB-Systematik:
- Mathematik
- Wirtschaft
- Sammlung:
- Mathematik
- Wirtschaft
- Copyright:
- CC BY
- Zugriffsberechtigung:
- Freier Zugang
- Titel:
- Bias formulas for violations of proximal identification assumptions in a linear structural equation model
- Erschienen:
-
Berlin: de Gruyter, 2024
- Sprache:
- Englisch
- Zusammenfassung:
- Abstract: Causal inference from observational data often rests on the unverifiable assumption of no unmeasured confounding. Recently, Tchetgen Tchetgen and colleagues have introduced proximal inference to leverage negative control outcomes and exposures as proxies to adjust for bias from unmeasured confounding. However, some of the key assumptions that proximal inference relies on are themselves empirically untestable. In addition, the impact of violations of proximal inference assumptions on the bias of effect estimates is not well understood. In this article, we derive bias formulas for proximal inference estimators under a linear structural equation model. These results are a first step toward sensitivity analysis and quantitative bias analysis of proximal inference estimators. While limited to a particular family of data generating processes, our results may offer some more general insight into the behavior of proximal inference estimators.
- Umfang:
- Online-Ressource
- Fußnote:
- Open Access
- Archivierung/Langzeitarchivierung gewährleistet
- Schlagworte:
- proximal causal inference ; sensitivity analysis ; bias analysis ; negative control ; 62D20
- ZLB-Systematik:
- Mathematik
- Wirtschaft
- Sammlung:
- Mathematik
- Wirtschaft
- Copyright:
- CC BY
- Zugriffsberechtigung:
- Freier Zugang