USPS: Unsupervised and Supervised methods of Propensity Score
Adjustment for Bias
Unsupervised PS Methods define Local Treatment Differences
(LTDs) within numerous Clusters of patients well-matched on
their pre-treatment X-characteristics and display the resulting
distribution of local effect-size estimates across Clusters. I
now prefer to call this form of Nonparametric Preprocessing of
observational outcomes Local Control; it uses patient blocking
/ matching concepts so as to rely only on a simple model
(Nested ANOVA, treatment within cluster) that becomes more and
more relastic as Clusters become small and numerous. In sharp
contrast, the Supervised PS Methods provided here attempt to
estimate unknow true Propensities with parametric models that
can be quite wrong and unrealistic. PS estimates always need
to be Validated; there is usually no guarantee that such
estimatres actually block patients with similar
X-characteristics together, like true propensities do.
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