Causal inference of Plackett-Burman designs in applications
classification
📊 stat.ME
keywords
causalapplicationsdesignseffectsinferenceplackett-burmanalgorithmconduct
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Driven by four applications of Plackett-Burman (PB) designs, this paper proposes a causal inference framework based on potential outcomes. First, we define the causal effects of the PB designs under finite populations. The Neymanian estimator of causal effects is then obtained, including the estimated variance and covariance. Furthermore, we conduct a sharp null-hypothesis test and construct the Fisherian interval using an algorithm. Finally, the proposed methods are illustrated through these applications.
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