基于机器学习的金融领域欺诈检测

Nilotpal Pathak, Swasti Singhal
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引用次数: 0

摘要

数字欺诈已经成为每个行业的威胁。对于任何公司来说,集中精力发现和防止欺诈活动是至关重要的。安全是重中之重。由于数字化,我们的交流方式发生了巨大的变化。一个简单的鼠标点击,完成我们的日常交易。另一方面,它也引起了一些骗子的担忧,这些骗子利用当前金融体系中缺乏保护的漏洞,模仿真实的客户,以客户的名义进行耗时的交易,从而获得利润,给机构和客户带来财务挫折。因此,组织需要对此予以关注。其品牌价值也受到影响。企业已经从错误中吸取了教训。为了防止欺诈和领先于犯罪分子,有必要保持持续的关注。密切关注主要趋势是至关重要的。我们可以区分合法交易和欺诈交易,获取客户数据,如地理位置、身份验证等,还可以在会话期间跟踪设备的IP地址。因此,机器学习(ML)将在未来识别此类欺诈示例方面发挥重要作用。我们使用决策树、XGBoost、K-NN等算法来为我们的项目找到最优解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fraud Detection in Financial Domain using Machine Learning
Digital fraud has become a menace in every industry. It is critical for any firm to have a concentrated focus on detecting and preventing fraudulent activities. Security is a priority. The way we communicate has changed dramatically as a result of digitization. A simple click of a mouse, complete our day-to-day transactions. On the other hand, it has created concerns from swindlers who take advantage of absent protections in current financial systems and mimic real customers, undertake time-consuming transactions on their behalf that result in a profit causing financial setbacks to the organizations and customers. Organizations will need to pay attention as a result of this. Its brand value is also affected. Organizations have learned from their mistakes. To prevent fraud and keep ahead of the criminals, it is necessary to maintain a constant focus. It’s critical to keep an eye on major trends. We might be able to tell the difference between a legitimate and a fraudulent transaction, obtaining customer data such as geolocation, authentication, and so on, it is possible to keep track of the device’s IP address during the session. Machine Learning (ML) will assume a significant part in the future in identifying examples of such frauds consequently. We use algorithms like decision trees, XGBoost, K-NN and others to find an optimal solution for our concerning project.
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