Modeling tax evasion with genetic algorithms
Authored by Geoffrey Warner, Sanith Wijesinghe, Uma Marques, Osama Badar, Jacob Rosen, Erik Hemberg, Una-May O'Reilly
Date Published: 2015
DOI: 10.1007/s10101-014-0152-7
Sponsors:
The MITRE Corporation Innovation Program
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Model Documentation:
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Abstract
The U.S. tax gap is estimated to exceed \$450 billion, most of which
arises from non-compliance on the part of individual taxpayers (GAO
2012; IRS 2006). Much is hidden in innovative tax shelters combining
multiple business structures such as partnerships, trusts, and
S-corporations into complex transaction networks designed to reduce and
obscure the true tax liabilities of their individual shareholders. One
known gambit employed by these shelters is to offset real gains in one
part of a portfolio by creating artificial capital losses elsewhere
through the mechanism of ``inflated basis{''} (TaxAnalysts 2005), a
process made easier by the relatively flexible set of rules surrounding
``pass-through{''} entities such as partnerships (IRS 2009). The ability
to anticipate the likely forms of emerging evasion schemes would help
auditors develop more efficient methods of reducing the tax gap. To this
end, we have developed a prototype evolutionary algorithm designed to
generate potential schemes of the inflated basis type described above.
The algorithm takes as inputs a collection of asset types and tax
entities, together with a rule-set governing asset exchanges between
these entities. The schemes produced by the algorithm consist of
sequences of transactions within an ownership network of tax entities.
Schemes are ranked according to a ``fitness function{''} (Goldberg in
Genetic algorithms in search, optimization, and machine learning.
Addison-Wesley, Boston, 1989); the very best schemes are those that
afford the highest reduction in tax liability while incurring the lowest
expected penalty.
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