Stephen L. Morgan (The Johns Hopkins University), Christopher Winship (Massachusetts Harvard University)
Counterfactuals and Causal Inference
Methods and Principles for Social Research
Stephen L. Morgan (The Johns Hopkins University), Christopher Winship (Massachusetts Harvard University)
Counterfactuals and Causal Inference
Methods and Principles for Social Research
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Cause-and-effect questions are the motivation for most research in the social, demographic, and health sciences. The counterfactual approach to causal analysis represents a unified framework for the prosecution of these questions. This second edition aims to convince more social scientists to take this approach when analyzing these core empirical questions.
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Cause-and-effect questions are the motivation for most research in the social, demographic, and health sciences. The counterfactual approach to causal analysis represents a unified framework for the prosecution of these questions. This second edition aims to convince more social scientists to take this approach when analyzing these core empirical questions.
Produktdetails
- Produktdetails
- Analytical Methods for Social Research
- Verlag: Cambridge University Press
- 2 Revised edition
- Seitenzahl: 515
- Erscheinungstermin: Oktober 2015
- Englisch
- Abmessung: 254mm x 178mm x 28mm
- Gewicht: 986g
- ISBN-13: 9781107694163
- ISBN-10: 1107694167
- Artikelnr.: 41493089
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Analytical Methods for Social Research
- Verlag: Cambridge University Press
- 2 Revised edition
- Seitenzahl: 515
- Erscheinungstermin: Oktober 2015
- Englisch
- Abmessung: 254mm x 178mm x 28mm
- Gewicht: 986g
- ISBN-13: 9781107694163
- ISBN-10: 1107694167
- Artikelnr.: 41493089
- Herstellerkennzeichnung
- Libri GmbH
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Stephen L. Morgan is the Bloomberg Distinguished Professor of Sociology and Education at Johns Hopkins University. He was previously the Jan Rock Zubrow '77 Professor in the Social Sciences and the director of the Center for the Study of Inequality at Cornell University. His current areas of interest include social stratification, the sociology of education, and quantitative methodology. He has published On the Edge of Commitment: Educational Attainment and Race in the United States (2005) and, as editor, the Handbook of Causal Analysis for Social Research (2013).
Part I. Causality and Empirical Research in the Social Sciences: 1.
Introduction; Part II. Counterfactuals, Potential Outcomes, and Causal
Graphs: 2. Counterfactuals and the potential-outcome model; 3. Causal
graphs; Part III. Estimating Causal Effects by Conditioning on Observed
Variables to Block Backdoor Paths: 4. Models of causal exposure and
identification criteria for conditioning estimators; 5. Matching estimators
of causal effects; 6. Regression estimators of causal effects; 7. Weighted
regression estimators of causal effects; Part IV. Estimating Causal Effects
When Backdoor Conditioning Is Ineffective: 8. Self-selection,
heterogeneity, and causal graphs; 9. Instrumental-variable estimators of
causal effects; 10. Mechanisms and causal explanation; 11. Repeated
observations and the estimation of causal effects; Part V. Estimation When
Causal Effects Are Not Point Identified by Observables: 12. Distributional
assumptions, set identification, and sensitivity analysis; Part VI.
Conclusions: 13. Counterfactuals and the future of empirical research in
observational social science.
Introduction; Part II. Counterfactuals, Potential Outcomes, and Causal
Graphs: 2. Counterfactuals and the potential-outcome model; 3. Causal
graphs; Part III. Estimating Causal Effects by Conditioning on Observed
Variables to Block Backdoor Paths: 4. Models of causal exposure and
identification criteria for conditioning estimators; 5. Matching estimators
of causal effects; 6. Regression estimators of causal effects; 7. Weighted
regression estimators of causal effects; Part IV. Estimating Causal Effects
When Backdoor Conditioning Is Ineffective: 8. Self-selection,
heterogeneity, and causal graphs; 9. Instrumental-variable estimators of
causal effects; 10. Mechanisms and causal explanation; 11. Repeated
observations and the estimation of causal effects; Part V. Estimation When
Causal Effects Are Not Point Identified by Observables: 12. Distributional
assumptions, set identification, and sensitivity analysis; Part VI.
Conclusions: 13. Counterfactuals and the future of empirical research in
observational social science.
Part I. Causality and Empirical Research in the Social Sciences: 1.
Introduction; Part II. Counterfactuals, Potential Outcomes, and Causal
Graphs: 2. Counterfactuals and the potential-outcome model; 3. Causal
graphs; Part III. Estimating Causal Effects by Conditioning on Observed
Variables to Block Backdoor Paths: 4. Models of causal exposure and
identification criteria for conditioning estimators; 5. Matching estimators
of causal effects; 6. Regression estimators of causal effects; 7. Weighted
regression estimators of causal effects; Part IV. Estimating Causal Effects
When Backdoor Conditioning Is Ineffective: 8. Self-selection,
heterogeneity, and causal graphs; 9. Instrumental-variable estimators of
causal effects; 10. Mechanisms and causal explanation; 11. Repeated
observations and the estimation of causal effects; Part V. Estimation When
Causal Effects Are Not Point Identified by Observables: 12. Distributional
assumptions, set identification, and sensitivity analysis; Part VI.
Conclusions: 13. Counterfactuals and the future of empirical research in
observational social science.
Introduction; Part II. Counterfactuals, Potential Outcomes, and Causal
Graphs: 2. Counterfactuals and the potential-outcome model; 3. Causal
graphs; Part III. Estimating Causal Effects by Conditioning on Observed
Variables to Block Backdoor Paths: 4. Models of causal exposure and
identification criteria for conditioning estimators; 5. Matching estimators
of causal effects; 6. Regression estimators of causal effects; 7. Weighted
regression estimators of causal effects; Part IV. Estimating Causal Effects
When Backdoor Conditioning Is Ineffective: 8. Self-selection,
heterogeneity, and causal graphs; 9. Instrumental-variable estimators of
causal effects; 10. Mechanisms and causal explanation; 11. Repeated
observations and the estimation of causal effects; Part V. Estimation When
Causal Effects Are Not Point Identified by Observables: 12. Distributional
assumptions, set identification, and sensitivity analysis; Part VI.
Conclusions: 13. Counterfactuals and the future of empirical research in
observational social science.







