A Machine Learning-based System for Financial Fraud Detection

João Paulo A. Andrade, Leonardo S. Paulucio, T. M. Paixão, Rodrigo Berriel, T. Carneiro, Raphael V. Carneiro, A. D. Souza, C. Badue, Thiago Oliveira-Santos
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引用次数: 4

Abstract

Companies created for money-laundering or as a means for taxevasion are harmful to the country's economy and society. This problem is usually tackled by governmental agencies by having officials to pore over companies' financial data and to single out those that exhibit fraudulent behavior. Such work tends to be slow-paced and tedious. This paper proposes a machine learning-based system capable of classifying whether a company is likely to be involved in fraud or not. Based on financial and tax data from various companies, four different classifiers – k-Nearest Neighbors, Random Forest, Support Vector Machine (SVM), and a Neural Network – were trained and then used to indicate fraud. The best-performing model achieved a macro-averaged F1-score of 92.98% with the Random Forest.
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基于机器学习的金融欺诈检测系统
为洗钱或逃税而设立的公司对国家的经济和社会有害。这个问题通常是由政府机构通过让官员仔细研究公司的财务数据,挑出那些有欺诈行为的公司来解决的。这样的工作往往是缓慢而乏味的。本文提出了一种基于机器学习的系统,能够对公司是否可能涉及欺诈进行分类。基于来自不同公司的财务和税收数据,四种不同的分类器——k近邻、随机森林、支持向量机(SVM)和神经网络——被训练出来,然后用来指出欺诈行为。表现最好的模型在随机森林的宏观平均f1得分为92.98%。
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