The central aim of many studies in population research and
demography is to explain cause-effect relationships among variables
or events. For decades, population scientists have concentrated
their efforts on estimating the 'causes of effects' by applying
standard cross-sectional and dynamic regression techniques, with
regression coefficients routinely being understood as estimates of
causal effects. The standard approach to infer the 'effects of
causes' in natural sciences and in psychology is to conduct
randomized experiments. In population studies, experimental designs
are generally infeasible.
In population studies, most research is based on
non-experimental designs (observational or survey designs) and
rarely on quasi experiments or natural experiments. Using
non-experimental designs to infer causal relationships-i.e.
relationships that can ultimately inform policies or
interventions-is a complex undertaking. Specifically, treatment
effects can be inferred from non-experimental data with a
counterfactual approach. In this counterfactual perspective, causal
effects are defined as the difference between the potential outcome
irrespective of whether or not an individual had received a certain
treatment (or experienced a certain cause). The counterfactual
approach to estimate effects of causes from quasi-experimental data
or from observational studies was first proposed by Rubin in 1974
and further developed by James Heckman and others.
This book presents both theoretical contributions and empirical
applications of the counterfactual approach to causal
inference.
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