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Anomaly Detection in Brazilian Federal Government Purchase Cards Through Unsupervised Learning Techniques

Published: 29 November 2021 Publication History

Abstract

The Federal Government Purchase Card (CPGF) has been used in Brazil since 2005, allowing agencies and entities of the federal public administration to make purchases of material and provision of services through this method. Although this payment system offers several advances, in the technological and administrative aspect, it is also susceptible to possible cases of card misuse and, consequently, waste of public funds, in the form of purchases that do not comply with the terms of the current legislation. In this work, we approach this problem by testing and evaluating unsupervised learning techniques on detecting anomalies in CPGF historical data. Four different methods are considered for this task: K-means, agglomerative clustering, a network-based approach, which is also introduced in this study, and a hybrid model. The experimental results obtained indicate that unsupervised methods, in particular the network-based approach, can indeed help in the task of monitoring government purchase card expenses, by flagging suspect transactions for further investigation without requiring the presence of a specialist in this process.

References

[1]
ABECS: Brazilian association of credit card and services companies. www.abecs.org.br. Accessed 2 July 2020
[2]
Akoglu L, Tong H, and Koutra D Graph based anomaly detection and description: a survey Data Mining Knowl. Disc. 2015 29 3 626-688
[3]
de Andrade, P.H.M.A., Meira, W., Cerqueira, B., Cruz, G.: Auditing government purchases with a multicriteria anomaly detection strategy. J. Inf. Data Manage. 11(1), 50–65 (2020)
[4]
Bholowalia, P., Kumar, A.: EBK-means: a clustering technique based on elbow method and k-means in WSN. Int. J. Comput. Appl. 105(9) (2014)
[5]
Bornholdt, S., Schuster, H.G.: Handbook of graphs and networks. From Genome to the Internet, Willey-VCH (2003 Weinheim) (2001)
[6]
Bradley, P.S., Fayyad, U.M.: Refining initial points for k-means clustering. In: ICML, vol. 98, pp. 91–99. Citeseer (1998)
[7]
Brandes U et al. On modularity clustering IEEE Trans. Knowl. Data Eng. 2007 20 2 172-188
[8]
Carcillo, F., Le Borgne, Y.A., Caelen, O., Kessaci, Y., Oblé, F., Bontempi, G.: Combining unsupervised and supervised learning in credit card fraud detection. Inf. Sci. 557, 317–331 (2019)
[9]
Clauset, A., Newman, M.E., Moore, C.: Finding community structure in very large networks. Phys. Rev. E 70(6), 066111 (2004)
[10]
Colliri, T., Zhao, L.: A network-based model for optimizing returns in the stock market. In: 2019 8th Brazilian Conference on Intelligent Systems (BRACIS), pp. 645–650 (2019).
[11]
Colliri, T., Zhao, L.: Stock market trend detection and automatic decision-making through a network-based classification model. Nat. Comput. 1–14 (2021).
[12]
Day WH and Edelsbrunner H Efficient algorithms for agglomerative hierarchical clustering methods J. Classif. 1984 1 1 7-24
[13]
Ferreira, L.N., Zhao, L.: Detecting time series periodicity using complex networks. In: 2014 Brazilian Conference on Intelligent Systems, pp. 402–407. IEEE (2014)
[14]
Li, J., Di, S., Shen, Y., Chen, L.: FluxEV: a fast and effective unsupervised framework for time-series anomaly detection. In: Proceedings of the 14th ACM International Conference on Web Search and Data Mining, pp. 824–832 (2021)
[15]
Likas A, Vlassis N, and Verbeek JJ The global k-means clustering algorithm Pattern Recogn. 2003 36 2 451-461
[16]
Paula, E.L., Ladeira, M., Carvalho, R.N., Marzagao, T.: Deep learning anomaly detection as support fraud investigation in Brazilian exports and anti-money laundering. In: 2016 15th IEEE International Conference on Machine Learning and Applications (ICMLA), pp. 954–960. IEEE (2016)
[17]
Republica, P.: Decreto 5.355 de 25 de janeiro de 2005. www.planalto.gov.br/ccivil03/ato2004-2006/2005/decreto/d5355.htm. Accessed 7 May 2021
[18]
Rezapour, M.: Anomaly detection using unsupervised methods: credit card fraud case study. Int. J. Adv. Comput. Sci. Appl. 10(11), 1–8 (2019)
[19]
da Uniao, B.C.G.: Portal da transparencia. Gastos por cartoes de pagamento. www.portaltransparencia.gov.br/cartoes?ano=2019. Accessed 27 June 2020
[20]
Ward JH Jr Hierarchical grouping to optimize an objective function J. Am. Stat. Assoc. 1963 58 301 236-244

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            cover image Guide Proceedings
            Intelligent Systems: 10th Brazilian Conference, BRACIS 2021, Virtual Event, November 29 – December 3, 2021, Proceedings, Part II
            Nov 2021
            648 pages
            ISBN:978-3-030-91698-5
            DOI:10.1007/978-3-030-91699-2

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            Springer-Verlag

            Berlin, Heidelberg

            Publication History

            Published: 29 November 2021

            Author Tags

            1. Anomaly detection
            2. Government purchase cards
            3. Unsupervised learning
            4. Complex networks.

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