Unsupervised and Supervised methods of Propensity Score Adjustment for Bias


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Documentation for package ‘USPS’ version 1.2-0

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USPS-package Unsupervised and Supervised Propensity Scoring adjustments for Bias and Confounding
lindner Lindner Center data on 996 PCI patients analyzed by Kereiakes et al.(2000)
plot.SPSloess Display LOESS Smooth of Outcome by Treatment in Supervised Propensiy Scoring
plot.SPSsmoot Display Spline Smooth of Outcome by Treatment in Supervised Propensiy Scoring
plot.UPSnnltd Display plots of the NN/LTD Distribution in Unsupervised Propensiy Scoring
SPSbalan Test for Within-Bin X-covariate Balance in Supervised Propensiy Scoring
SPSloess LOESS Smoothing of Outcome by Treatment in Supervised Propensiy Scoring
SPSlogit Propensity Score prediction of Treatment Selection from Patient Baseline X-covariates
SPSnbins Change the Number of Bins in Supervised Propensiy Scoring
SPSoutco Examine Treatment Differences on an Outcome Measure in Supervised Propensiy Scoring
SPSsmoot Spline Smoothing of Outcome by Treatment in Supervised Propensiy Scoring
UPSaccum Prepare for Accumulation of (Outcome,Treatment) Results in Unsupervised Propensity Scoring.
UPSaltdd Artificial Distribution of LTDs from Random Clusters
UPSgraph Display Sensitivity Analysis Graphic in Unsupervised Propensiy Scoring
UPShclus Hierarchical Clustering of Patients on X-covariates for Unsupervised Propensiy Scoring
UPSivadj Instrumental Variable LATE Linear Fitting in Unsupervised Propensiy Scoring
UPSnnltd Nearest Neighbor Distribution of LTDs in Unsupervised Propensiy Scoring