基于XGBoost算法的财务风险控制方法

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摘要

近年来,随着技术的不断进步,传统金融行业与互联网的快速融合,催生了处理高并发、大规模、多维数据的网上金融业务。然而,由于金融业的高盈利能力和高风险,以及欺诈手段的升级,这种转型也对金融风险控制提出了更高的要求。近年来,以大数据、人工智能为代表的先进技术为商业银行提升风控能力提供了新的方向,机器学习的作用越来越重要。本文旨在通过数据分析、数据预处理、特征工程、数据集划分,以及机器学习中的XGBoost和LightGBM算法,对客户欺诈行为进行预测,为保障金融机构的稳定运行和客户资产的安全提供帮助。
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A Financial Risk Control Method Based on XGBoost Algorithm
For the past few years, with the continuous progress of technology, the rapid integration of traditional financial industry and the Internet has given rise to online financial businesses that deal with high-concurrency, large-scale, and multidimensional data. However, due to the high profitability and high risk of the financial industry, as well as the upgrading of fraudulent means, this transformation has also put higher requirements on financial risk control. Recently, advanced technologies represented by big data and artificial intelligence have provided new directions for improving risk control capabilities for commercial banks, with machine learning playing an increasingly important role. This paper aims to predict customer fraud behavior by conducting data analysis, data preprocessing, feature engineering , dataset partitioning, and using XGBoost and LightGBM algorithms in machine learning, in order to provide assistance in ensuring the stable operation of financial institutions and the security of customer assets.
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