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Validating Benfordness on contaminated data

Academic Article
Publication Date:
2024
abstract:
Benford's law is a mathematical model, very recurrent in practice for a wide variety of datasets, used to represent the frequencies of digits. A well-established usage of Benfordness statistical testing lies within investigations aimed to ascertain if balance sheet and income statement data are genuine. A typical, frustrating problem of Benfordness statistical tests on big, practical datasets is that they often provide p-valuessmaller than expected when the Benfordness null hypothesis is very realistic. A possible reason is that data are contaminated by some kind of noise. In this paper we propose the deconvolution approach to alleviate this issue, using both simulated and real data.
Iris type:
1.1 Articolo in rivista
Keywords:
Benford; Deconvolution method; Fraud detection; Kernel density estimation
List of contributors:
Di Marzio, Marco; Fensore, Stefania; Passamonti, Chiara
Authors of the University:
DI MARZIO Marco
FENSORE STEFANIA
Handle:
https://ricerca.unich.it/handle/11564/846453
Published in:
SOCIO-ECONOMIC PLANNING SCIENCES
Journal
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