The VIX index under scrutiny of machine learning techniques and neural networks
Ali Hirsa, Joerg Osterrieder, Branka Hadji Misheva, Wenxin Cao, Yiwen, Fu, Hanze Sun, Kin Wai Wong

TL;DR
This paper explores machine learning and neural network techniques to replicate and analyze the VIX index, aiming to improve understanding of its calculation and address concerns about market manipulation.
Contribution
It introduces methods using subset options and neural networks to accurately replicate the VIX index with fewer data points, aiding market analysis and regulation.
Findings
Small subset of options suffices to replicate VIX
Neural networks effectively learn the VIX formula
Potential arbitrage opportunities identified
Abstract
The CBOE Volatility Index, known by its ticker symbol VIX, is a popular measure of the market's expected volatility on the SP 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 SP 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…
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