The VIX Index Under Scrutiny of Machine Learning Techniques and Neural Networks

19 Pages Posted: 3 Mar 2021 Last revised: 13 Aug 2023

See all articles by Ali Hirsa

Ali Hirsa

Columbia University

Branka Hadji Misheva

Zurich University of Applied Sciences

Joerg Osterrieder

University of Twente; Bern Business School

Wenxin Cao

Columbia University

Yiwen Fu

Columbia University

Hanze Sun

Columbia University

Kin Wai Wong

Columbia University

Date Written: February 3, 2021

Abstract

The CBOE Volatility Index, known by its ticker symbol VIX, is a popular measure of the market’s expected volatility on the S&P 500 Index, calculated and published by the Chicago Board Options Exchange (CBOE). It is also often referred to as the fear index or the fear gauge. The current VIX index value quotes the expected annualized change in the S&P 500 index over the following 30 days, based on options-based theory and current options-market data. Despite its theoretical foundation in option price theory, CBOE’s Volatility Index is prone to inadvertent and deliberate errors because it is weighted average of out-of-the-money calls and puts which could be illiquid. Many claims of market manipulation have been brought up against VIX in recent years. This paper discusses several approaches to replicate the VIX index as well as VIX futures by using a subset of relevant options as well as neural networks that are trained to automatically learn the underlying formula. Using subset selection approaches on top of the original CBOE methodology, as well as building machine learning and neural network models including Random Forests, Support Vector Machines, feed-forward neural networks, and long short-term memory (LSTM) models, we will show that a small number of options is sufficient to replicate the VIX index. Once we are able to actually replicate the VIX using a small number of S&P options we will be able to exploit potential arbitrage opportunities between the VIX index and its underlying derivatives. The results are supposed to help investors to better understand the options market, and more importantly, to give guidance to the US regulators and CBOE that have been investigating those manipulation claims for several years.

Keywords: VIX, Machine Learning, Deep Learning, VIX futures

JEL Classification: G00

Suggested Citation

Hirsa, Ali and Hadji Misheva, Branka and Osterrieder, Joerg and Cao, Wenxin and Fu, Yiwen and Sun, Hanze and Wong, Kin Wai, The VIX Index Under Scrutiny of Machine Learning Techniques and Neural Networks (February 3, 2021). Available at SSRN: https://ssrn.com/abstract=3796351 or http://dx.doi.org/10.2139/ssrn.3796351

Ali Hirsa

Columbia University ( email )

500 West 120th Street
New York, NY 10027

HOME PAGE: http://www.ieor.columbia.edu/faculty/ali-hirsa

Branka Hadji Misheva

Zurich University of Applied Sciences ( email )

IDP
Technikumstrasse 9
Winterthur, CH 8401
Switzerland

Joerg Osterrieder (Contact Author)

University of Twente ( email )

Drienerlolaan 5
Departement of High-Tech Business and Entrepreneur
Enschede, 7522 NB
Netherlands

Bern Business School ( email )

Brückengasse
Institute of Applied Data Sciences and Finance
Bern, BE 3005
Switzerland

Wenxin Cao

Columbia University ( email )

3022 Broadway
New York, NY 10027
United States

Yiwen Fu

Columbia University ( email )

3022 Broadway
New York, NY 10027
United States

Hanze Sun

Columbia University ( email )

3022 Broadway
New York, NY 10027
United States

Kin Wai Wong

Columbia University ( email )

3022 Broadway
New York, NY 10027
United States

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