View source: R/robomit_functions.R
o_beta_boot_viz | R Documentation |
Estimates and visualizes bootstrapped beta*s, i.e., the bias-adjusted treatment effects (or correlations) (following Oster 2019).
o_beta_boot_viz(y, x, con, m = "none", w = NULL, id = "none", time = "none", delta = 1, R2max, sim, obs, rep, CI, type, norm = TRUE, bin, col = c("#08306b","#4292c6","#c6dbef"), nL = TRUE, mL = TRUE, useed = NA, data)
y |
Name of the dependent variable (as string). |
x |
Name of the independent treatment variable (i.e., variable of interest; as string). |
con |
Name of related control variables. Provided as string in the format: "w + z +...". |
m |
Name of unrelated control variables (m; see Oster 2019; as string; default is m = "none"). |
w |
weights (only for weighted estimations). Warning: For weighted panel models R can report different R-square than Stata, leading deviation between R and Stata results. |
id |
Name of the individual id variable (e.g. firm or farm; as string). Only applicable for fixed effect panel models. |
time |
Name of the time id variable (e.g. year or month; as string). Only applicable for fixed effect panel models. |
delta |
delta for which beta*s should be estimated (default is delta = 1). |
R2max |
Maximum R-square for which beta*s should be estimated. |
sim |
Number of simulations. |
obs |
Number of draws per simulation. |
rep |
Bootstrapping either with (= TRUE) or without (= FALSE) replacement |
CI |
Confidence intervals, indicated as vector. Can be and/or 90, 95, 99. |
type |
Model type (either lm or plm; as string). |
norm |
Option to include a normal distribution in the plot (default is norm = TURE). |
bin |
Number of bins used in the histogram. |
col |
Colors used to indicate different confidence interval levels (indicated as vector). Needs to be the same length as the variable CI. The default is a blue color range. |
nL |
Option to include a red vertical line at 0 (default is nL = TRUE). |
mL |
Option to include a vertical line at mean of all beta*s (default is mL = TRUE). |
useed |
User defined seed. |
data |
Dataset. |
Estimates and visualizes bootstrapped beta*s, i.e., the bias-adjusted treatment effects (or correlations) (following Oster 2019). Bootstrapping can either be done with or without replacement. The function supports linear cross-sectional (see lm objects in R) and fixed effect panel (see plm objects in R) models.
Returns ggplot2 object, which depicts the bootstrapped beta*s.
Oster, E. (2019). Unobservable Selection and Coefficient Stability: Theory and Evidence. Journal of Business & Economic Statistics, 37, 187-204.
# load data, e.g. the in-build mtcars dataset data("mtcars") data_oster <- mtcars # preview of data head(data_oster) # load robomit require(robomit) # estimate and visualize bootstrapped beta*s o_beta_boot_viz(y = "mpg", # dependent variable x = "wt", # independent treatment variable con = "hp + qsec", # related control variables delta = 1, # delta R2max = 0.9, # maximum R-square sim = 100, # number of simulations obs = 30, # draws per simulation rep = FALSE, # bootstrapping with or without replacement CI = c(90,95,99), # confidence intervals type = "lm", # model type norm = TRUE, # normal distribution bin = 200, # number of bins useed = 123, # seed data = data_oster) # dataset
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