In credibility ratemaking, one seeks to estimate the conditional mean of a
given risk. The most accurate estimator (as measured by squared error loss)
is the predictive mean. To calculate the predictive mean one needs the con
ditional distribution of losses given the parameter of interest (often the
conditional mean) and the prior distribution of the parameter of interest.
Young (1997. ASTIN Bulletin 27, 273-285) uses kernel density estimation to
estimate the prior distribution of the conditional mean. She illustrates he
r method with simulated data from a mixture of a lognormal conditional over
a lognormal prior and finds that the estimated predictive mean is more acc
urate than the linear Buhlmann credibility estimator. However, generally, i
n her example, the estimated predictive mean was more accurate only up to t
he 95th percentile of the marginal distribution of claims. Beyond that poin
t, the credibility estimator occasionally diverged widely from the true pre
dictive mean.
To reduce this divergence, we propose using the loss function of Young and
De Vylder (2000. North American Actuarial Journal, 4(1), 107-113). Their lo
ss function is a linear combination of a squared-error term and a term that
encourages the estimator to be close to constant, especially in the tails
of the distribution of claims, where Young (1997) noted the difficulty with
her semiparametric approach. We show that by using this loss function, the
problem of upward divergence noted in Young (1997) is reduced. We also pro
vide a simple routine for minimizing the loss function, based on the discus
sion of De Vylder in Young (1998a. North American Actuarial Journal 2, 101-
117). (C) 2000 Elsevier Science B.V. All rights reserved.