The overall objective of this study is to analyze the relative effectivenes
s and efficiency of several analytical procedures. To accomplish this, we t
est the power characteristics of analytical procedures in simulated busines
s and economic environments. The analytical procedures we test include the
Martingate, Census X-ll, ARIMA, and stepwise regression expectation models.
The power characteristics are measured by both positive and negative testi
ng approaches, with and without accompanying tests of details, and with sim
ple and dispersed error seeding patterns.
The results suggest that the stepwise regression model outperforms X-ll, AR
IMA, and Martingale models in discriminating between the decision risks at
zero and material error for both testing approaches. All models seem to per
form better in terms of the aggregate slope for higher degrees of economic
stability. The stepwise procedure either outperforms the other procedures f
or the positive approach or comes close to doing so for the negative approa
ch in terms of reducing the risk of incorrectly concluding that an account
is not in material error when it is indeed in material error.
The stepwise model combined with the negative approach exhibits the lowest
risk of rejecting an account that is not materially misstated. The negative
approach of testing, compared to the positive approach, seems to offer the
auditor superior protection against not detecting a material error, white
minimizing excessive audit work by correctly concluding that an account is
not in material error if nonmaterial errors are present. When applied in co
njunction with tests of details as well as when different error dispersion
patterns are considered, all four analytical procedure models provide about
the same level of assurance (effectiveness) in detecting material errors.
The stepwise model, however, is the most efficient one in both of these sce
narios in saving excessive audit work.