SpliceTB {ReIns} | R Documentation |
Plot of fitted and Turnbull survival function
Description
This function plots the fitted survival function of the spliced distribution together with the
Turnbull survival function (which is suitable for interval censored data). Moreover, 100(1-\alpha)\%
confidence intervals are added.
Usage
SpliceTB(x = sort(L), L, U = L, censored, splicefit, alpha = 0.05, ...)
Arguments
x |
Vector of points to plot the functions at. By default we plot it at the points |
L |
Vector of length |
U |
Vector of length |
censored |
A logical vector of length |
splicefit |
A |
alpha |
|
... |
Additional arguments for the |
Details
Right censored data should be entered as L=l
and U=truncupper
, and left censored data should be entered as L=trunclower
and U=u
. The limits trunclower
and truncupper
are obtained from the SpliceFit
object.
Use SpliceECDF
for non-censored data.
See Reynkens et al. (2017) and Section 4.3.2 in Albrecher et al. (2017) for more details.
Author(s)
Tom Reynkens
References
Albrecher, H., Beirlant, J. and Teugels, J. (2017). Reinsurance: Actuarial and Statistical Aspects, Wiley, Chichester.
Reynkens, T., Verbelen, R., Beirlant, J. and Antonio, K. (2017). "Modelling Censored Losses Using Splicing: a Global Fit Strategy With Mixed Erlang and Extreme Value Distributions". Insurance: Mathematics and Economics, 77, 65–77.
Verbelen, R., Gong, L., Antonio, K., Badescu, A. and Lin, S. (2015). "Fitting Mixtures of Erlangs to Censored and Truncated Data Using the EM Algorithm." Astin Bulletin, 45, 729–758
See Also
SpliceECDF
, pSplice
, Turnbull
, SpliceFiticPareto
, SpliceLL_TB
, SplicePP_TB
, SpliceQQ_TB
Examples
## Not run:
# Pareto random sample
X <- rpareto(500, shape=2)
# Censoring variable
Y <- rpareto(500, shape=1)
# Observed sample
Z <- pmin(X,Y)
# Censoring indicator
censored <- (X>Y)
# Right boundary
U <- Z
U[censored] <- Inf
# Splice ME and Pareto
splicefit <- SpliceFiticPareto(L=Z, U=U, censored=censored, tsplice=quantile(Z,0.9))
x <- seq(0,20,0.1)
# Plot of spliced CDF
plot(x, pSplice(x, splicefit), type="l", xlab="x", ylab="F(x)")
# Plot of spliced PDF
plot(x, dSplice(x, splicefit), type="l", xlab="x", ylab="f(x)")
# Fitted survival function and Turnbull survival function
SpliceTB(x, L=Z, U=U, censored=censored, splicefit=splicefit)
# Log-log plot with Turnbull survival function and fitted survival function
SpliceLL_TB(x, L=Z, U=U, censored=censored, splicefit=splicefit)
# PP-plot of Turnbull survival function and fitted survival function
SplicePP_TB(L=Z, U=U, censored=censored, splicefit=splicefit)
# PP-plot of Turnbull survival function and
# fitted survival function with log-scales
SplicePP_TB(L=Z, U=U, censored=censored, splicefit=splicefit, log=TRUE)
# QQ-plot using Turnbull survival function and fitted survival function
SpliceQQ_TB(L=Z, U=U, censored=censored, splicefit=splicefit)
## End(Not run)