Initial Margin Simulation with Deep Learning

Xun Ma, S. Spinner, Alex Venditti, Z. Li, Strong Tang
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引用次数: 4

Abstract

Regulatory initial margin (IM) for non-cleared OTC derivatives is currently being implemented in the financial industry per BCBS-IOSCO requirements. To incorporate IM into counterparty credit risk (CCR) measurements and xVA calculations (especially MVA), it is necessary to simulate future IM requirements inside a CCR/xVA system. However, this is an extremely challenging task because the two readily available approaches – brute force simulation and regression-based approximation – are either prohibitively expensive in terms of computational cost, or extremely difficult for large and diverse portfolios due to the high dimensionality of the problem. In this paper, a practical deep learning approach to IM simulation is proposed, with a proof-of-concept implementation and test results demonstrating fast and accurate portfolio-level simulation of scenario-dependent IM through multiple time steps. Model training is shown to converge quickly, and model performance is robust under practical conditions. This approach separates offline training from online simulation, so that it can be implemented in production without significant system overhaul. Conceptually, since training data are generated by a deterministic function (in this case the sensitivity-based SIMM model), data noise is not a concern and overfitting can be avoided, assuming portfolio turnovers occur gradually during periods of time much longer than model training cycles. Model output can also be explained or validated by the underlying data-generating function for transparency. Other potential applications of this deep learning approach are also discussed, including collateral optimization.
基于深度学习的初始边际模拟
根据BCBS-IOSCO的要求,目前金融行业正在实施非清算场外衍生品的监管初始保证金(IM)。为了将IM纳入交易对手信用风险(CCR)度量和xVA计算(尤其是MVA),有必要在CCR/xVA系统中模拟未来的IM需求。然而,这是一项极具挑战性的任务,因为两种现成的方法——蛮力模拟和基于回归的近似——要么在计算成本方面过于昂贵,要么由于问题的高维性,对于大型和多样化的投资组合来说极其困难。本文提出了一种实用的IM仿真深度学习方法,并通过概念验证实现和测试结果证明了通过多时间步对场景依赖的IM进行快速准确的组合级仿真。结果表明,模型训练收敛速度快,在实际条件下具有良好的鲁棒性。这种方法将离线培训与在线模拟分离开来,因此它可以在生产中实现,而无需进行重大的系统检修。从概念上讲,由于训练数据是由确定性函数(在本例中是基于灵敏度的SIMM模型)生成的,因此数据噪声不是一个问题,并且可以避免过拟合,假设投资组合周转率在比模型训练周期长得多的时间内逐渐发生。模型输出也可以通过底层数据生成函数进行解释或验证,以提高透明度。本文还讨论了这种深度学习方法的其他潜在应用,包括附带优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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