Contributions to the Testing of Benford's Law
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Abstract
Benford’s Law is a statistical phenomenon stating that the distribution of leading digits
in a set of naturally occurring numbers follows a logarithmic trend, where the distribution
of the first digit is P(D1 = d1) = log(1+1/d1), d1 ϵ {1,2, ...,9}. While most
commonly used for fraud detection in a variety of areas, including accounting, taxation,
and elections, recent work has examined applications within multiple choice
testing. Building upon this, we look at test bank data from mathematics and statistics
textbooks, and apply three commonly used conformity tests: Pearson’s chi-square, MAD,
and SSD, and two simultaneous confidence intervals. From there, we run simulation
studies to determine the coverage of each, and propose a new conformity test using
linear regression with the inverse of the Benford probability function. Our analysis
reveals that the inverse regressionmodel is an improvement upon the chi-square goodness of
fit test and the regression model that was previously proposed in 2006 by A.D. Saville;
however, still presents some asymptotic issues at large sample sizes. The proposed
method is compared to the previously utilized tests through numerical examples.