条件生成对抗网络的时间序列仿真

Rao Fu, Jie Chen, Shutian Zeng, Yiping Zhuang, A. Sudjianto
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引用次数: 40

摘要

生成对抗网络(GAN)已被证明是图像数据分析和生成的强大机器学习工具。在本文中,我们提出使用条件生成对抗网络(CGAN)来学习和模拟时间序列数据。条件包括具有不同辅助信息的分类变量和连续变量。我们的仿真研究表明,CGAN具有学习不同类型的正态分布和重尾分布以及不同时间序列的相关结构的能力。它还具有生成与训练数据分布一致的条件预测分布的能力。我们还深入讨论了GAN和神经网络作为分层样条的基本原理,以建立与现有分布生成统计方法的明确联系。在实践中,CGAN在市场风险和交易对手风险分析中有着广泛的应用:它可以用来学习历史数据,生成计算风险价值(VaR)和预期缺口(ES)的场景,也可以预测市场风险因素的运动。通过对真实数据的回溯检验,证明了CGAN算法优于历史模拟(HS)方法,后者是市场风险分析中计算VaR的常用方法,也可用于经济时间序列建模和预测。在这方面,我们在论文的最后包括了一个经济模型的假设冲击分析和CGAN产生潜在CCAR情景的例子
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Time Series Simulation by Conditional Generative Adversarial Net
Generative Adversarial Net (GAN) has proved to be a powerful machine learning tool in image data analysis and generation. In this paper, we propose to use Conditional Generative Adversarial Net (CGAN) to learn and simulate time series data. The conditions include both categorical and continuous variables with different auxiliary information. Our simulation studies show that CGAN has the capability to learn different types of normal and heavy-tailed distributions, as well as dependent structures of different time series. It also has the capability to generate conditional predictive distributions consistent with training data distributions. We also provide an in-depth discussion on the rationale behind GAN and the neural networks as hierarchical splines to establish a clear connection with existing statistical methods of distribution generation. In practice, CGAN has a wide range of applications in market risk and counterparty risk analysis: it can be applied to learn historical data and generate scenarios for the calculation of Value-at-Risk (VaR) and Expected Shortfall (ES), and it can also predict the movement of the market risk factors. We present a real data analysis including a backtesting to demonstrate that CGAN can outperform Historical Simulation (HS), a popular method in market risk analysis to calculate VaR. CGAN can also be applied in economic time series modeling and forecasting. In this regard, we have included an example of hypothetical shock analysis for economic models and the generation of potential CCAR scenarios by CGAN at the end of the paper
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