Arithmetical Tugs of War and Benford's Law
Alex Ely Kossovsky

TL;DR
This paper explores how the interplay between multiplication and addition processes in data generation influences adherence to Benford's Law, emphasizing the role of magnitude and skewness in digital distribution patterns.
Contribution
It introduces the concept of arithmetical tugs of war, analyzing how combined additive and multiplicative processes affect Benford compliance based on their dominance and magnitude.
Findings
Multiplication promotes Benford's Law adherence by increasing skewness.
Addition tends to diminish Benford conformity by producing more symmetrical distributions.
The dominance of either process depends on the magnitude and algebraic involvement in data generation.
Abstract
Benford's Law predicts that the first significant digit on the leftmost side of numbers in real-life data is proportioned between all possible 1 to 9 digits approximately as in LOG(1 + 1/digit), so that low digits occur much more frequently than high digits in the first place. The two essential prerequisites for data configuration with regards to compliance with Benford's Law are high order of magnitude and positive skewness with a tail falling to the right of the histogram, so that quantitative configuration is such that the small is numerous and the big is rare. A related topic in the study of Benford's Law is the stark contrast between multiplications and additions of random variables and their distinct resultant quantitative and digital configurations. Random multiplication processes induce substantial increase in order of magnitude and they tend to the skewed Lognormal…
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Taxonomy
TopicsBenford’s Law and Fraud Detection · Digital Media Forensic Detection · Computability, Logic, AI Algorithms
