Abstract :
This paper deals with a study of different types of tests for the two-sided c-sample scale problem. We
consider the classical parametric test of Bartlett [M.S. Bartlett, Properties of sufficiency and statistical
tests, Proc. R. Stat. Soc. Ser. A. 160 (1937), pp. 268–282] several nonparametric tests, especially the
test of Fligner and Killeen [M.A. Fligner and T.J. Killeen, Distribution-free two-sample tests for scale,
J. Amer. Statist. Assoc. 71 (1976), pp. 210–213], the test of Levene [H. Levene, Robust tests for equality of
variances, in Contribution to Probability and Statistics, I. Olkin, ed., Stanford University Press, Palo Alto,
1960, pp. 278–292] and a robust version of it introduced by Brown and Forsythe [M.B. Brown and A.B.
Forsythe, Robust tests for the equality of variances, J.Amer. Statist. Assoc. 69 (1974), pp. 364–367] as well
as two adaptive tests proposed by Büning [H. Büning, Adaptive tests for the c-sample location problem
– the case of two-sided alternatives, Comm. Statist.Theory Methods. 25 (1996), pp. 1569–1582] and
Büning [H. Büning, An adaptive test for the two sample scale problem, Nr. 2003/10, Diskussionsbeiträge
des FachbereichWirtschaftswissenschaft der Freien Universität Berlin,Volkswirtschaftliche Reihe, 2003].
which are based on the principle of Hogg [R.V. Hogg, Adaptive robust procedures. A partial review and
some suggestions for future applications and theory, J. Amer. Statist. Assoc. 69 (1974), pp. 909–927]. For
all the tests we use Bootstrap sampling strategies, too.We compare via Monte Carlo Methods all the tests
by investigating level α and power β of the tests for distributions with different strength of tailweight and
skewness and for various sample sizes. It turns out that the test of Fligner and Killeen in combination with
the bootstrap is the best one among all tests considered
Keywords :
power comparison , Bootstrap , Parametric , Nonparametric , ?-robustness , tailweight skewness , Sampling Strategies , Nonnormality , robustified and adaptive tests