Fit GPDs to various thresholds and plot the fitted GPD shape as a function of the threshold.
GPD_shape_plot(x, thresholds = seq(quantile(x, 0.5), quantile(x, 0.99),
length.out = 65),
estimate.cov = TRUE, conf.level = 0.95,
CI.col = adjustcolor(1, alpha.f = 0.2),
lines.args = list(), xlim = NULL, ylim = NULL,
xlab = "Threshold", ylab = NULL,
xlab2 = "Excesses", plot = TRUE, ...)
Invisibly returns a list
containing the thresholds
considered, the corresponding excesses and the fitted GPD
objects as returned by the underlying fit_GPD_MLE()
.
numeric
vector of thresholds for which
to fit a GPD to the excesses.
logical
indicating whether
confidence intervals are to be computed.
confidence level of the confidence intervals if
estimate.cov
.
color of the pointwise asymptotic confidence intervals
(CIs); if NA
, no CIs are shown.
list
of arguments passed to
the underlying lines()
for drawing the shape
parameter as a function of the threshold.
see plot()
.
label of the secondary x-axis.
logical
indicating whether a plot is produced.
additional arguments passed to the underlying
plot()
.
Marius Hofert
Such plots can be used in the peaks-over-threshold method for determining the optimal threshold (as the smallest after which the plot is (roughly) stable).
set.seed(271)
X <- rt(1000, df = 3.5)
GPD_shape_plot(X)
Run the code above in your browser using DataLab