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Efficient Importance Sampling under Heston Model: Short Maturity and Deep Out-of-the-Money Options

Published: November 25, 2025 | arXiv ID: 2511.19826v1

By: Yun-Feng Tu, Chuan-Hsiang Han

Potential Business Impact:

Makes stock price predictions much more accurate.

Business Areas:
A/B Testing Data and Analytics

This paper investigates asymptotically optimal importance sampling (IS) schemes for pricing European call options under the Heston stochastic volatility model. We focus on two distinct rare-event regimes where standard Monte Carlo methods suffer from significant variance deterioration: the limit as maturity approaches zero and the limit as the strike price tends to infinity. Leveraging the large deviation principle (LDP), we design a state-dependent change of measure derived from the asymptotic behavior of the log-price cumulant generating functions. In the short-maturity regime, we rigorously prove that our proposed IS drift, inspired by the variational characterization of the rate function, achieves logarithmic efficiency (asymptotic optimality) by minimizing the decay rate of the second moment of the estimator. In the deep OTM regime, we introduce a novel slow mean-reversion scaling for the variance process, where the mean-reversion speed scales as the inverse square of the small-noise parameter (defined as the reciprocal of the log-moneyness). We establish that under this specific scaling, the variance process contributes non-trivially to the large deviation rate function, requiring a specialized Riccati analysis to verify optimality. Numerical experiments demonstrate that the proposed method yields substantial variance reduction--characterized by factors exceeding several orders of magnitude--compared to standard estimators in both asymptotic regimes.

Country of Origin
🇹🇼 Taiwan, Province of China

Page Count
29 pages

Category
Quantitative Finance:
Mathematical Finance