which are the PWMs of the uncensored sample of $m$ observed values. The B-type PWMs are computed from the
The two previous expressions are used in the function. These PWMs are readily converted to L-moments by the usual methods (pwm2lmom
). When there are more than a few censored values, the PWMs are readily computed by computing $\beta^A_r$ and using the expression
where
The two expressions above are consulted when the checkbetas=TRUE
argument is present. Both sequences of B-type are cat
ed to the terminal. This provides a check on the implementation of the algorithm. The functions Apwm2BpwmRC
and Bpwm2ApwmRC
can be used to switch back and forth between the two PWM types given fitted parameters for a distribution in the RC
in the function name is to denote R
ight-tail C
ensoring.
pwmRC(x,threshold=NULL,nmom=5,sort=TRUE,checkbetas=FALSE)
i=1
of the betas
vector.list
is returned.pwm()
returns if there is no censoring. Note that convention is the have a $\beta_0$, but this is placed in the first index i=1
of the betas
vector.NA
if there is no censoring. Note that convention is the have a $\beta_0$, but this is placed in the first index i=1
of the betas
vector.numabovethreshold/samplesize
sapply(x,function(v) { if(v >= T) return(T); return(v)})
to reset the data vector x
. By operating on the data in this fashion one can toy with various levels of the threshold for experimental purposes; this seemed a more natural way for general implementation. The code sets $n$=length(x)
and $m$=n - length(x[x == T])
, which also seems natural. The $\beta^A_r$ are computed by dispatching to pwm
.Hosking, J.R.M., 1990, L-moments---Analysis and estimation of distributions using linear combinations of order statistics: Journal of the Royal Statistical Society, Series B, vol. 52, p. 105--124.
Hosking, J.R.M., 1995, The use of L-moments in the analysis of censored data, in Recent Advances in Life-Testing and Reliability, edited by N. Balakrishnan, chapter 29, CRC Press, Boca Raton, Fla., pp. 546--560.
lmoms
, pwm2lmom
, pwm
, pwmLC
# Data listed in Hosking (1995, table 29.2, p. 551)
H <- c(3,4,5,6,6,7,8,8,9,9,9,10,10,11,11,11,13,13,13,13,13,
17,19,19,25,29,33,42,42,51.9999,52,52,52)
# 51.9999 was really 52, a real (noncensored) data point.
z <- pwmRC(H,threshold=52,checkbetas=TRUE)
str(z)
# Hosking(1995) reports that A-type L-moments for this sample are
# lamA1=15.7 and lamAL-CV=.389, and lamAL-skew=.393
pwm2lmom(z$Abetas)
# My version of R reports 15.666, 0.3959, and 0.4030
# See p. 553 of Hosking (1995)
# Data listed in Hosking (1995, table 29.3, p. 553)
D <- c(-2.982, -2.849, -2.546, -2.350, -1.983, -1.492, -1.443,
-1.394, -1.386, -1.269, -1.195, -1.174, -0.854, -0.620,
-0.576, -0.548, -0.247, -0.195, -0.056, -0.013, 0.006,
0.033, 0.037, 0.046, 0.084, 0.221, 0.245, 0.296)
D <- c(D,rep(.2960001,40-28)) # 28 values, but Hosking mentions
# 40 values in total
z <- pwmRC(D,.2960001)
# Hosking reports B-type L-moments for this sample are
# lamB1 = -.516 and lamB2 = 0.523
pwm2lmom(z$Bbetas)
# My version of R reports -.5162 and 0.5218
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