BIAS, VARIANCE, MSE SIMULATIONS
These are the files containing all the source code needed to
run the simulations in Scharfstein and Irizarry's "Generalized
Additive Selection Models for the Analysis of Non-ignorable Missing Data"
The functions performing the estimation are in
gam-fit.S, doubly-robust.S, and orthogonal.S
simulation.S | The simulation can be started by simply sourcing this file in Splus 3.4 |
functions.S | Defines some Splus function used throughout |
constants.S | This file contains the definitions of most constants, such as number of data points, effect sizes, etc... |
model-generation.S | generates the models determined by the information in constants.S |
data-generation.S | creates the data, Y, X and R using models defined above |
gam-fit.S | performs the gam-type procedure to estimate gamma |
doubly-robust.S | computes the double robust estimates |
orthogonal.S | computes the orthogonal estimate you can then run |
show.S | shows the results of simulation you can use |
test.S | gives some summary stats for the data made with model generation and data-generation |
BOOTSTRAP, MODEL SELECTION SIMULATIONS
bootstrap.S | you can run the bootstrap simulations by simply sourcing in into Splus 3.4 |
bootstrap-gam-fit.S | for these simulation the gam fit is a bit different because we need to predict |