Design and Optimization of Big Data and Machine Learning-Based Risk Monitoring System in Financial Markets

Liyang Wang, Yu Cheng, Xingxin Gu, Zhizhong Wu
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Abstract

With the increasing complexity of financial markets and rapid growth in data volume, traditional risk monitoring methods no longer suffice for modern financial institutions. This paper designs and optimizes a risk monitoring system based on big data and machine learning. By constructing a four-layer architecture, it effectively integrates large-scale financial data and advanced machine learning algorithms. Key technologies employed in the system include Long Short-Term Memory (LSTM) networks, Random Forest, Gradient Boosting Trees, and real-time data processing platform Apache Flink, ensuring the real-time and accurate nature of risk monitoring. Research findings demonstrate that the system significantly enhances efficiency and accuracy in risk management, particularly excelling in identifying and warning against market crash risks.
基于大数据和机器学习的金融市场风险监控系统的设计与优化
随着金融市场的日益复杂和数据量的快速增长,传统的风险监控方法已不能满足现代金融机构的需要。本文设计并优化了基于大数据和机器学习的风险监控系统。通过构建一个四层架构,它有效地整合了大规模金融数据和先进的机器学习算法。系统采用的关键技术包括长短期记忆(LSTM)网络、随机森林、梯度提升树和实时数据处理平台 Apache Flink,确保了风险监控的实时性和准确性。研究结果表明,该系统大大提高了风险管理的效率和准确性,特别是在识别和预警市场崩溃风险方面表现出色。
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