lsprobust.plot
plots estimated regression functions and confidence regions using the lspartition package.
See Cattaneo and Farrell (2013) and Cattaneo, Farrell and Feng (2019a) for complete details.
Companion command: lsprobust
for partitioning-based least squares regression
estimation and inference; lsprobust.plot
for plotting results; lsplincom
for multiple sample estimation and inference.
A detailed introduction to this command is given in Cattaneo, Farrell and Feng (2019b).
For more details, and related Stata and R packages useful for empirical analysis, visit https://sites.google.com/site/nppackages/.
lsprobust.plot(..., alpha = NULL, type = NULL, CS = "ci",
CStype = NULL, title = "", xlabel = "", ylabel = "",
lty = NULL, lwd = NULL, lcol = NULL, pty = NULL, pwd = NULL,
pcol = NULL, CSshade = NULL, CScol = NULL, legendTitle = NULL,
legendGroups = NULL)
Objects returned by lsprobust
.
Numeric scalar between 0 and 1, the significance level for plotting confidence regions. If more than one is provided, they will be applied to data series accordingly.
String, one of "line"
(default), "points"
, "binscatter"
,
"none"
or "both"
, how the point estimates are plotted. If more
than one is provided, they will be applied to data series accordingly.
String, type of confidence sets. Options are "ci"
for pointwise confidence
intervals, "cb"
for uniform confidence bands, and "all"
for both.
String, one of "region"
(shaded region, default), "line"
(dashed lines), "ebar"
(error bars), "all"
(all of the previous)
or "none"
(no confidence region), how the confidence region should
be plotted. If more than one is provided, they will be applied to data series accordingly.
If CS = "all"
, pointwise confidence intervals are forced to be represented by error bars,
and uniform bands are represented by both lines and regions.
String, title of the plot.
Strings, labels for x-axis.
Strings, labels for y-axis.
Scatter plot size for point estimates, only effective if type
is
"points"
or "both"
. Should be strictly positive. If more than
one is provided, they will be applied to data series accordingly.
Numeric, opaqueness of the confidence region, should be between 0 (transparent) and 1. Default is 0.2. If more than one is provided, they will be applied to data series accordingly.
String, title of legend.
String vector, group names used in legend.
A standard ggplot2
object is returned, hence can be used for further
customization.
Companion command: lsprobust
for partition-based least-squares regression
estimation.
Cattaneo, M. D., M. H. Farrell, and Y. Feng (2019a): Large Sample Properties of Partitioning-Based Series Estimators. Annals of Statistics, forthcoming. arXiv:1804.04916.
Cattaneo, M. D., M. H. Farrell, and Y. Feng (2019b): lspartition: Partitioning-Based Least Squares Regression. Working paper.
# NOT RUN {
x <- runif(500)
y <- sin(4*x)+rnorm(500)
est <- lsprobust(y, x)
lsprobust.plot(est)
# }
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