This study investigates the properties of the Kolmogorov-Smirnov (K-S), Cra
mervon Mises (C-M), and Anderson-Darling (A-D) statistics for goodness-of-f
it tests for type-I extreme-value and for 2-parameter Weibull distributions
, when the population parameters are estimated from a complete sample by gr
aphical plotting techniques (GPT). Three GPT - median ranks, mean ranks, sy
mmetrical sample cumulative distribution (symmetrical ranks)- are combined
with the least-squares method (LSM) on extreme-value and Weibull probabilit
y paper to estimate the population parameters. The critical values of the K
-S, C-M, A-D statistics are calculated by Monte Carlo simulation, in which
10(6) sets of samples for each sample size of 3(1)20, 25(5)50, and 60(10)10
0 are generated. The power of the K-S, C-M, A-D statistics are investigated
for 3 graphical plotting techniques and for maximum likelihood estimators
(MLE). Monte Carlo simulation provided the power results using 10(4) repeti
tions for each sample size of 5, 10, 25, 40. The power comparison showed th
at:
-Among 3 CPT, the symmetrical ranks give more powerful results than the med
ian and mean ranks for the K-S, C-M, A-D statistics.
-Among 3 GPT and the MLE, the symmetrical ranks provide more powerful resul
ts than the MLE for the K-S and A-D statistics; for the C-M statistic, the
MLE provide more powerful results than 3 GPT,
-Generally, the A-D statistic coupled with the symmetrical ranks and LSM is
most powerful among the competitors in this study and is recommended for p
ractical use.