Pricing Bounds for VIX Derivatives via Least Squares Monte Carlo

14 Pages Posted: 2 Nov 2016

See all articles by Ivan Guo

Ivan Guo

Monash University - School of Mathematical Sciences

Gregoire Loeper

BNP Paribas; Monash University - School of Mathematical Sciences; Monash University - Monash Centre for Quantitative Finance and Investment Strategies; Ecole Polytechnique, Palaiseau - CMAP CNRS-UMR 7641 and Ecole Polytechnique

Date Written: November 2, 2016

Abstract

Derivatives on the Chicago Board Options Exchange volatility index (VIX) have gained significant popularity over the last decade. The pricing of VIX derivatives involves evaluating the square root of the expected realised variance which cannot be computed by direct Monte Carlo methods. Least squares Monte Carlo methods can be used but the sign of the error is difficult to determine. In this paper, we propose new model independent upper and lower pricing bounds for VIX derivatives. In particular, we first present a general stochastic duality result on payoffs involving concave functions. This is then applied to VIX derivatives along with minor adjustments to handle issues caused by the square root function. The upper bound involves the evaluation of a variance swap, while the lower bound involves estimating a martingale increment corresponding to its hedging portfolio. Both can be achieved simultaneously using a single linear least square regression. Numerical results show that the method works very well for VIX futures, calls and puts under a wide range of parameter choices.

Keywords: VIX Derivatives, Least Squares Monte Carlo, Pricing Bounds

JEL Classification: G12, C63

Suggested Citation

Guo, Ivan and Loeper, Gregoire, Pricing Bounds for VIX Derivatives via Least Squares Monte Carlo (November 2, 2016). Available at SSRN: https://ssrn.com/abstract=2862554 or http://dx.doi.org/10.2139/ssrn.2862554

Ivan Guo (Contact Author)

Monash University - School of Mathematical Sciences ( email )

Clayton Campus
Victoria, 3800
Australia

Gregoire Loeper

BNP Paribas ( email )

Paris
France

Monash University - School of Mathematical Sciences ( email )

Clayton Campus
Victoria, 3800
Australia

Monash University - Monash Centre for Quantitative Finance and Investment Strategies ( email )

9 Rainforest Walk
Clayton Campus
Monash University, Victoria 3800
Australia

HOME PAGE: http://https://www.monash.edu/science/quantitative-finance

Ecole Polytechnique, Palaiseau - CMAP CNRS-UMR 7641 and Ecole Polytechnique ( email )

Route de Saclay
Palaiseau, 91128
France

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