Utilizing Machine Learning and Big Data Analysis for Risk Mitigation and Fraud Detection in Finance

None Aayushi Waghela, None Dev Makadia, None Monika Mangla
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Abstract

With the rise of online banking systems and easy transactions, there is an increase in fraud in the banking system and in the field of finance. To reduce fraud in the transactions we can apply the systems of machine learning algorithms and big data analysis. In this research paper, we discuss various methods used in the field such as Supervised learning, Unsupervised learning, and Ensemble Methods in the field of machine learning and transaction monitoring, behavior analytics, network analytics, and pattern recognition in the field of real-time monitoring. We have used a data set from Kaggle on credit card transactions and the methods of Random Forest Classification and Support Vector Machine which comes under the supervised learning method in machine learning and discussed other results and benefits achieved from it.
利用机器学习和大数据分析降低金融风险和欺诈检测
随着网上银行系统的兴起和交易的便捷,银行系统和金融领域的欺诈行为有所增加。为了减少交易中的欺诈,我们可以应用机器学习算法和大数据分析系统。在这篇研究论文中,我们讨论了在机器学习和事务监控、行为分析、网络分析和实时监控领域的模式识别领域中使用的各种方法,如监督学习、无监督学习和集成方法。我们使用了来自Kaggle的信用卡交易数据集和机器学习中监督学习方法下的随机森林分类和支持向量机的方法,并讨论了它所获得的其他结果和好处。
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