Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
167 tokens/sec
GPT-4o
7 tokens/sec
Gemini 2.5 Pro Pro
42 tokens/sec
o3 Pro
4 tokens/sec
GPT-4.1 Pro
38 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

Improved model-free bounds for multi-asset options using option-implied information and deep learning (2404.02343v1)

Published 2 Apr 2024 in q-fin.PR, cs.LG, math.OC, and stat.ML

Abstract: We consider the computation of model-free bounds for multi-asset options in a setting that combines dependence uncertainty with additional information on the dependence structure. More specifically, we consider the setting where the marginal distributions are known and partial information, in the form of known prices for multi-asset options, is also available in the market. We provide a fundamental theorem of asset pricing in this setting, as well as a superhedging duality that allows to transform the maximization problem over probability measures in a more tractable minimization problem over trading strategies. The latter is solved using a penalization approach combined with a deep learning approximation using artificial neural networks. The numerical method is fast and the computational time scales linearly with respect to the number of traded assets. We finally examine the significance of various pieces of additional information. Empirical evidence suggests that "relevant" information, i.e. prices of derivatives with the same payoff structure as the target payoff, are more useful that other information, and should be prioritized in view of the trade-off between accuracy and computational efficiency.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (24)
  1. L. D. G. Aquino and C. Bernard. Bounds on multi-asset derivatives via neural networks. International Journal of Theoretical and Applied Finance, 23(8):2050050, 2020.
  2. Duality for increasing convex functionals with countably many marginal constraints. Banach Journal of Mathematical Analysis, 11:72–89, 2017.
  3. Marginal and dependence uncertainty: bounds, optimal transport, and sharpness. SIAM Journal on Control and Optimization, 60:410–434, 2022.
  4. D. Bertsimas and I. Popescu. On the relation between option and stock prices: a convex optimization approach. Operations Research, 50(2):358–374, 2002.
  5. Static super-replicating strategies for a class of exotic options. Insurance Math. Econom., 42:1067–1085, 2008.
  6. Computing lower bounds on basket option prices by discretizing semi-infinite linear programming. Optimization Letters, 10:1629–1644, 2016.
  7. A. d’Aspremont and L. El Ghaoui. Static arbitrage bounds on basket option prices. Math. Program., 106(3, Ser. A):467–489, 2006.
  8. S. Daum and R. Werner. A novel feasible discretization method for linear semi-infinite programming applied to basket option pricing. Optimization, 60(10-11):1379–1398, 2011.
  9. The concept of comonotonicity in actuarial science and finance: theory. Insurance Math. Econom., 31:3–33, 2002a.
  10. The concept of comonotonicity in actuarial science and finance: applications. Insurance Math. Econom., 31:133–161, 2002b.
  11. S. Eckstein and M. Kupper. Computation of optimal transport and related hedging problems via penalization and neural networks. Applied Mathematics & Optimization, 83:639–667, 2021.
  12. Robust pricing and hedging of options on multiple assets and its numerics. SIAM Journal on Financial Mathematics, 12(1):158–188, 2021.
  13. P. Henry-Labordère. Model-free hedging: A martingale optimal transport viewpoint. CRC Press, Boca Raton, FL, 2017.
  14. Static-arbitrage upper bounds for the prices of basket options. Quant. Finance, 5:329–342, 2005a.
  15. Static-arbitrage optimal subreplicating strategies for basket options. Insurance Math. Econom., 37:553–572, 2005b.
  16. D. G. Hobson. Robust hedging of the lookback option. Finance and Stochastics, 2(4):329–347, 1998.
  17. T. Lux and A. Papapantoleon. Improved Fréchet–Hoeffding bounds on d𝑑ditalic_d-copulas and applications in model-free finance. Ann. Appl. Probab., 27:3633–3671, 2017.
  18. Model-free bounds for multi-asset options using option-implied information and their exact computation. Management Science, 69(4):2051–2068, 2023.
  19. Computing general static-arbitrage bounds for european basket options via dantzig-wolfe decomposition. Algorithmic Operations Research, 5(2):65–74, 2010a.
  20. Static-arbitrage lower bounds on the prices of basket options via linear programming. Quant. Finance, 10:819–827, 2010b.
  21. Computing arbitrage upper bounds on basket options in the presence of bid–ask spreads. European Journal of Operational Research, 222(2):369–376, 2012.
  22. VaR bounds for joint portfolios with dependence constraints. Depend. Model., 4:368–381, 2016.
  23. Model Risk Management: Risk Bounds under Uncertainty. Cambridge University Press, 2024.
  24. P. Tankov. Improved Fréchet bounds and model-free pricing of multi-asset options. J. Appl. Probab., 48:389–403, 2011.

Summary

We haven't generated a summary for this paper yet.