Neural networks and arbitrage in the VIX: A deep learning approach for the VIX.

Digital finance Pub Date : 2020-01-01 Epub Date: 2020-08-13 DOI:10.1007/s42521-020-00026-y
Joerg Osterrieder, Daniel Kucharczyk, Silas Rudolf, Daniel Wittwer
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引用次数: 8

Abstract

The Chicago Board Options Exchange Volatility Index (VIX) is considered by many market participants as a common measure of market risk and investors' sentiment, representing the market's expectation of the 30-day-ahead looking implied volatility obtained from real-time prices of options on the S&P 500 index. While smaller deviations between implied and realized volatility are a well-known stylized fact of financial markets, large, time-varying differences are also frequently observed throughout the day. Furthermore, substantial deviations between the VIX and its futures might lead to arbitrage opportunities on the VIX market. Arbitrage is hard to exploit as the potential strategy to exploit it requires buying several hundred, mostly illiquid, out-of-the-money (put and call) options on the S&P 500 index. This paper discusses a novel approach to predicting the VIX on an intraday scale by using just a subset of the most liquid options. To the best of the authors' knowledge, this the first paper, that describes a new methodology on how to predict the VIX (to potentially exploit arbitrage opportunities using VIX futures) using most recently developed machine learning models to intraday data of S&P 500 options and the VIX. The presented results are supposed to shed more light on the underlying dynamics in the options markets, help other investors to better understand the market and support regulators to investigate market inefficiencies.

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VIX中的神经网络和套利:VIX的深度学习方法。
芝加哥期权交易所波动率指数(VIX)被许多市场参与者视为衡量市场风险和投资者情绪的常用指标,代表市场对未来30天的隐含波动率的预期,该隐含波动率来自标准普尔500指数的实时期权价格。虽然隐含波动率和实际波动率之间较小的偏差是众所周知的金融市场的程式化事实,但全天也经常观察到较大的时变差异。此外,波动率指数与其期货之间的重大偏差可能导致波动率指数市场上的套利机会。套利很难被利用,因为利用它的潜在策略需要购买数百个标准普尔500指数(S&P 500)的非流动性(看跌期权和看涨期权)期权。本文讨论了一种新的方法来预测波动率指数在日内规模,仅使用最具流动性的一个子集的选择。据作者所知,这是第一篇论文,描述了一种关于如何预测VIX(利用VIX期货潜在地利用套利机会)的新方法,该方法使用最新开发的机器学习模型来预测标准普尔500指数期权和VIX的盘中数据。本文给出的结果应该能更清楚地揭示期权市场的潜在动态,帮助其他投资者更好地了解市场,并支持监管机构调查市场的低效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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