Brazilian Government Procurements: an Approach to Find Fraud Traces in Companies Relationships

  • Rebeca A. Baldomir CGU
  • Gustavo C. G. Van Erven CGU
  • Célia Ghedini Ralha UNB

Resumo


Data mining has been an area of high visibility in recent years and many researches have shown good efficiency in this area to find information in large databases. This paper presents an approach to find fraud traces applying data mining techniques to public databases of the Brazilian Federal Government bidings. The aim is to find evidence of fraud, such as stunts and cartels. The task of finding fraud evidences in large amount of data is complex for auditors since they have correlate data. The proposed approach was used to develop a prototype which has been used by auditors in the Ministry of Transparency and General Comptroller of the Union (CGU).

Referências


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Publicado
22/10/2018
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BALDOMIR, Rebeca A.; VAN ERVEN, Gustavo C. G.; RALHA, Célia Ghedini. Brazilian Government Procurements: an Approach to Find Fraud Traces in Companies Relationships. In: ENCONTRO NACIONAL DE INTELIGÊNCIA ARTIFICIAL E COMPUTACIONAL (ENIAC), 15. , 2018, São Paulo. Anais [...]. Porto Alegre: Sociedade Brasileira de Computação, 2018 . p. 752-762. ISSN 2763-9061. DOI: https://doi.org/10.5753/eniac.2018.4464.