Volume 31, Number 4 (Fall) 1996
Manski, Charles F. 1996. "Learning About Treatment Effects from Experiments with Random Assignment of Treatments." Journal of Human Resources 31(4):707-733.
The importance of social programs to a diverse population creates a
legitimate concern that the findings of evaluations be widely credible. The weaker the assumptions
imposed, the more widely credible are the findings. The classical argument for random assignment of
treatments is viewed by many as enabling evaluation under weak assumptions, and it has generated
much interest in the conduct of experiments. But the classical argument does impose assumptions, and
there often is good reason to doubt their realism.
The
methodological research described in this article explores the inferences that may be drawn from
experimental data under assumptions weak enough to yield widely credible findings. This literature
has two branches. One seeks out notions of treatment effect that are identified when the
experimental data are combined with weak assumptions. The canonical finding is that the average
treatment effect within some context-specific subpopulation is identified. The other branch
specifies a population of a priori interest and seeks to learn about treatment effects in this
population. Here the canonical finding is a bound on average treatment effects.
The various approaches to the analysis of experiments are
complementary from a mathematical perspective, but in tension as guides to evaluation practice. The
reader of an evaluation reporting that some social program “works” or has a ““positive
impact” should be careful to ascertain what treatment effect has been estimated and under what
assumptions.
Charles. F. Manski is a professor of economics at the University of Wisconsin-Madison and a former editor of the Journal of Human Resources. This research is supported by National Science Foundation Grant SBR92-23220. The author has benefited from the comments of Joshua Angrist, Glen Cain, Jeff Dominitz, Arthur Goldberger, V. Joseph Hotz, John Kennan, Bruce Meyer, Robert Moffitt, John Pencavel, Tomas Philipson, James Robins, and a referee.
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