A Large-Scale Agent-Based Model of Taxpayer Reporting Compliance
Authored by Kim M Bloomquist, Matt Koehler
Date Published: 2015
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Platforms:
Repast
Java
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Abstract
This paper describes the development of the Individual Reporting
Compliance Model (IRCM), an agent-based model for simulating tax
reporting compliance in a community of 85,000 U.S. taxpayers. Design
features include detailed tax return characteristics, taxpayer learning, social networks, and tax agency enforcement measures. The taxpayer's
compliance reporting decision is modeled as a partially observable
Markov decision process that takes into account taxpayers' heterogeneous
risk profiles and non-stationary beliefs about the expected costs
associated with alternative reporting strategies. In order to comply
with legal requirements prohibiting the disclosure of taxpayer
information, artificial taxpayers are created using data from the
Statistics of Income (SOI) Public Use File (PUF). Misreported amounts
for major income and offset items are imputed to tax returns are based
on examination results from random taxpayer audits. A hypothetical case
study illustrates how IRCM can be used to compare alternative taxpayer
audit selection strategies.
Tags
Dynamics
tax compliance
Evasion