Problems with inferring causal relationships from nonexperimental data are briefly reviewed, and four broad classes of methods designed to allow estimation of and inference about causal parameters are described: panel regression, matching or reweighting, instrumental variables, and regression discontinuity. Practical examples are offered, and discussion focuses on checking required assumptions to the extent possible. © 2007 StataCorp LP.
CITATION STYLE
Nichols, A. (2007). Causal inference with observational data. Stata Journal, 7(4), 507–541. https://doi.org/10.1177/1536867x0800700403
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