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自动微分计算希腊值×Bates模型×
领域量化金融量化金融
方法族Machine learningRegression model
起源年份20081996
提出者Mike Giles, Iman HomescuDavid S. Bates
类型Sensitivity AnalysisEquity/FX Model
开创性文献Giles, M. B. (2008). Adjoint code by automatic differentiation. Journal of Computational Finance, 12(1), 1-18. link ↗Bates, D. S. (1996). Jumps and stochastic volatility: Exchange rate processes implicit in Deutsche Mark options. Review of Financial Studies, 9(1), 69-107. DOI ↗
别名AD Greeks, Algorithmic Differentiation, AutodiffSVJ Model, Jump Diffusion
相关34
摘要Automatic differentiation (AD) is a computational technique for computing derivatives (Greeks) by differentiating the computer code that computes the option price. AD avoids manual derivation of formulas and finite-difference approximations, yielding exact sensitivities with machine precision. It has become essential for real-time risk management in modern trading systems.The Bates model (1996) combines stochastic volatility and jump diffusion to capture both the volatility smile and the implied volatility skew observed in equity and currency option markets. It extends the Heston model by adding a Poisson jump component to returns, making it suitable for pricing options when sudden price moves are expected.
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  3. PUBLISHED

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ScholarGate方法对比: Greeks via Automatic Differentiation · Bates Model. 于 2026-06-18 检索自 https://scholargate.app/zh/compare