Multivariate Affine GARCH with Heavy Tails: A Unified Framework for Portfolio Optimization and Option Valuation

32 Pages Posted: 19 May 2025

See all articles by Ayush Jha

Ayush Jha

Texas Tech University

Abootaleb Shirvani

Kean University

Ali Jaffri

North Dakota State University - College of Business

Svetlozar T. Rachev

Texas Tech University

Frank J. Fabozzi

Johns Hopkins University - Carey Business School

Date Written: May 19, 2025

Abstract

This paper develops and estimates a multivariate affine GARCH(1,1) model with Normal Inverse Gaussian innovations that captures time-varying volatility, heavy tails, and dynamic correlation across asset returns. We generalize the Heston-Nandi framework to a multivariate setting and apply it to 30 Dow Jones Industrial Average stocks. The model jointly supports three core financial applications: dynamic portfolio optimization, wealth path simulation, and option pricing. Closed-form solutions are derived for a Constant Relative Risk Aversion (CRRA) investor's intertemporal asset allocation, and we implement a forward-looking risk-adjusted performance comparison against Merton-style constant strategies. Using the model's conditional volatilities, we also construct implied volatility surfaces for European options, capturing skew and smile features. Empirically, we document substantial wealth-equivalent utility losses from ignoring time-varying correlation and tail risk. These findings underscore the value of a unified econometric framework for analyzing joint asset dynamics and for managing portfolio and derivative exposures under non-Gaussian risks.

Keywords: Option Pricing, Multivariate Affine GARCH, Portfolio Optimization, Wealth Accumulation. JEL Codes: G10, G11, G13, G17

JEL Classification: G10, G11, G13, G17

Suggested Citation

Jha, Ayush and Shirvani, Abootaleb and Jaffri, Ali and Rachev, Svetlozar T. and Fabozzi, Frank J., Multivariate Affine GARCH with Heavy Tails: A Unified Framework for Portfolio Optimization and Option Valuation (May 19, 2025). Available at SSRN: https://ssrn.com/abstract=5260415 or http://dx.doi.org/10.2139/ssrn.5260415

Ayush Jha (Contact Author)

Texas Tech University ( email )

2500 Broadway
Lubbock, TX 79409
United States

Abootaleb Shirvani

Kean University ( email )

1000 Morris Ave
Union, NJ 07083
United States

Ali Jaffri

North Dakota State University - College of Business ( email )

Fargo, ND 58105
United States
8065024729 (Phone)

Svetlozar T. Rachev

Texas Tech University ( email )

2500 Broadway
Lubbock, TX 79409
United States

Frank J. Fabozzi

Johns Hopkins University - Carey Business School ( email )

100 International Drive
Baltimore, MD 21202
United States

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