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Journal ArticleDOI

Estimating causal effects of treatments in randomized and nonrandomized studies.

Donald B. Rubin
- 01 Oct 1974 - 
- Vol. 66, Iss: 5, pp 688-701
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TLDR
A discussion of matching, randomization, random sampling, and other methods of controlling extraneous variation is presented in this paper, where the objective is to specify the benefits of randomization in estimating causal effects of treatments.
Abstract
A discussion of matching, randomization, random sampling, and other methods of controlling extraneous variation is presented. The objective is to specify the benefits of randomization in estimating causal effects of treatments. The basic conclusion is that randomization should be employed whenever possible but that the use of carefully controlled nonrandomized data to estimate causal effects is a reasonable and necessary procedure in many cases. Recent psychological and educational literature has included extensive criticism of the use of nonrandomized studies to estimate causal effects of treatments (e.g., Campbell & Erlebacher, 1970). The implication in much of this literature is that only properly randomized experiments can lead to useful estimates of causal effects. If taken as applying to all fields of study, this position is untenable. Since the extensive use of randomized experiments is limited to the last half century,8 and in fact is not used in much scientific investigation today,4 one is led to the conclusion that most scientific "truths" have been established without using randomized experiments. In addition, most of us successfully determine the causal effects of many of our everyday actions, even interpersonal behaviors, without the benefit of randomization. Even if the position that causal effects of treatments can only be well established from randomized experiments is taken as applying only to the social sciences in which

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Journal ArticleDOI

Bayesian Inference for Causal Effects: The Role of Randomization

TL;DR: In this article, the authors make clear the role of mechanisms that sample experimental units, assign treatments and record data, and that unless these mechanisms are ignorable, the Bayesian must model them in the data analysis and confront inferences for causal effects that are sensitive to the specification of the prior distribution of the data.
Journal ArticleDOI

Nonparametric Estimation of Average Treatment Effects under Exogeneity: A Review

TL;DR: In this article, the authors review the state of the art in estimating average treatment effects under various sets of assumptions, including exogeneity, unconfoundedness, or selection on observables.
Journal ArticleDOI

Causal diagrams for empirical research

TL;DR: In this paper, a nonparametric framework for causal inference is proposed, in which diagrams are queried to determine if the assumptions available are sufficient for identifying causal effects from nonexperimental data.
Journal ArticleDOI

Social Norms and Energy Conservation

TL;DR: In this paper, a series of programs run by a company called OPOWER to send Home Energy Report letters to residential utility customers comparing their electricity use to that of their neighbors is evaluated.
Journal ArticleDOI

Causal Effects in Nonexperimental Studies: Reevaluating the Evaluation of Training Programs

TL;DR: The authors used propensity score methods to estimate the treatment impact of the National Supported Work Demonstration, a labor training program, on postintervention earnings, using data from Lalonde's evaluation of nonexperimental methods that combine the treated units from a randomized evaluation of the NSW with nonex-imental comparison units drawn from survey datasets.
References
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Book

Statistical Methods for Research Workers

R. A. Fisher
TL;DR: The prime object of as discussed by the authors is to put into the hands of research workers, and especially of biologists, the means of applying statistical tests accurately to numerical data accumulated in their own laboratories or available in the literature.
Book

Testing statistical hypotheses

TL;DR: The general decision problem, the Probability Background, Uniformly Most Powerful Tests, Unbiasedness, Theory and First Applications, and UNbiasedness: Applications to Normal Distributions, Invariance, Linear Hypotheses as discussed by the authors.
Journal ArticleDOI

The Analysis of Variance

TL;DR: In this paper, the basic theory of analysis of variance by considering several different mathematical models is examined, including fixed-effects models with independent observations of equal variance and other models with different observations of variance.
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