Artículo de revista
Characterization and detection of taxpayers with false invoices using data mining techniques
Fecha
2013Registro en:
Expert Systems with Applications 40 (2013) 1427–1436
doi 10.1016/j.eswa.2012.08.051
Autor
Castellón González, Pamela
Velásquez Silva, Juan
Institución
Resumen
In this paper we give evidence that it is possible to characterize and detect those potential users of false
invoices in a given year, depending on the information in their tax payment, their historical performance
and characteristics, using different types of data mining techniques. First, clustering algorithms like SOM
and neural gas are used to identify groups of similar behaviour in the universe of taxpayers. Then decision
trees, neural networks and Bayesian networks are used to identify those variables that are related to conduct
of fraud and/or no fraud, detect patterns of associated behaviour and establishing to what extent
cases of fraud and/or no fraud can be detected with the available information. This will help identify patterns
of fraud and generate knowledge that can be used in the audit work performed by the Tax Administration
of Chile (in Spanish Servicio de Impuestos Internos (SII)) to detect this type of tax crime.