Counterfactuals and Causal Inference: Methods and Principles for Social Research

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Cambridge University Press, 30.07.2007
Did mandatory busing programs in the 1970s increase the school achievement of disadvantaged minority youth? Does obtaining a college degree increase an individual's labor market earnings? Did the use of the butterfly ballot in some Florida counties in the 2000 presidential election cost Al Gore votes? If so, was the number of miscast votes sufficiently large to have altered the election outcome? At their core, these types of questions are simple cause-and-effect questions. Simple cause-and-effect questions are the motivation for much empirical work in the social sciences. This book presents a model and set of methods for causal effect estimation that social scientists can use to address causal questions such as these. The essential features of the counterfactual model of causality for observational data analysis are presented with examples from sociology, political science, and economics.
 

Ausgewählte Seiten

Inhalt

Abschnitt 1
3
Abschnitt 2
25
Abschnitt 3
27
Abschnitt 4
31
Abschnitt 5
61
Abschnitt 6
67
Abschnitt 7
87
Abschnitt 8
123
Abschnitt 9
169
Abschnitt 10
187
Abschnitt 11
219
Abschnitt 12
243
Abschnitt 13
245
Abschnitt 14
277

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Autoren-Profil (2007)

Stephen L. Morgan is Associate Professor of Sociology and the current Director of the Center for the Study of Inequality at Cornell University. His previous publications include On the Edge of Commitment: Educational Attainment and Race in the United States (2005).

Christopher Winship is Diker-Tishman Professor of Sociology at Harvard University. For the past twelve years he has served as editor of Sociological Methods and Research. He has published widely in a variety of journals and edited volumes.

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