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

被引:10
作者
Joerg Osterrieder
Daniel Kucharczyk
Silas Rudolf
Daniel Wittwer
机构
[1] School of Engineering, Zurich University of Applied Sciences, Winterthur
[2] Faculty of Pure and Applied Mathematics, Hugo Steinhaus Center, Wroclaw University of Science and Technology, Wroclaw
[3] Nexoya Ltd., Zurich
[4] AGCO International GmbH, Neuhausen
来源
Digital Finance | 2020年 / 2卷 / 1-2期
基金
欧盟地平线“2020”;
关键词
A00; Arbitrage; C00; Deep learning; G00; LSTM; Market manipulation; Neural network; Random forests; SPX; VIX;
D O I
10.1007/s42521-020-00026-y
中图分类号
学科分类号
摘要
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. © The Author(s) 2020.
引用
收藏
页码:97 / 115
页数:18
相关论文
共 50 条
[31]   Deep Neural Networks for Emergency Detection [J].
Cipolla, Emanuele ;
Rizzo, Riccardo ;
Vella, Filippo .
ARTIFICIAL NEURAL NETWORKS AND MACHINE LEARNING - ICANN 2017, PT I, 2017, 10613 :460-461
[32]   Learning representations for the early detection of sepsis with deep neural networks [J].
Kam, Hye Jin ;
Kim, Ha Young .
COMPUTERS IN BIOLOGY AND MEDICINE, 2017, 89 :248-255
[33]   Unrestricted deep metric learning using neural networks interaction [J].
Mehralian, Soheil ;
Teshnehlab, Mohammad ;
Nasersharif, Babak .
PATTERN ANALYSIS AND APPLICATIONS, 2021, 24 (04) :1699-1711
[34]   Efficient Bayesian Learning of Sparse Deep Artificial Neural Networks [J].
Fakhfakh, Mohamed ;
Bouaziz, Bassem ;
Chaari, Lotfi ;
Gargouri, Faiez .
ADVANCES IN INTELLIGENT DATA ANALYSIS XX, IDA 2022, 2022, 13205 :78-88
[35]   Unrestricted deep metric learning using neural networks interaction [J].
Soheil Mehralian ;
Mohammad Teshnehlab ;
Babak Nasersharif .
Pattern Analysis and Applications, 2021, 24 :1699-1711
[36]   Introduction to Machine Learning, Neural Networks, and Deep Learning [J].
Choi, Rene Y. ;
Coyner, Aaron S. ;
Kalpathy-Cramer, Jayashree ;
Chiang, Michael F. ;
Campbell, J. Peter .
TRANSLATIONAL VISION SCIENCE & TECHNOLOGY, 2020, 9 (02)
[37]   Deep neural networks, gradient-boosted trees, random forests: Statistical arbitrage on the S&P 500 [J].
Krauss, Christopher ;
Xuan Anh Do ;
Huck, Nicolas .
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2017, 259 (02) :689-702
[38]   Learning deep neural networks for node classification [J].
Li, Bentian ;
Pi, Dechang .
EXPERT SYSTEMS WITH APPLICATIONS, 2019, 137 :324-334
[39]   Deep Learning for Epidemiologists: An Introduction to Neural Networks [J].
Serghiou, Stylianos ;
Rough, Kathryn .
AMERICAN JOURNAL OF EPIDEMIOLOGY, 2023, 192 (11) :1904-1916
[40]   Evolutionary neural networks for deep learning: a review [J].
Yongjie Ma ;
Yirong Xie .
International Journal of Machine Learning and Cybernetics, 2022, 13 :3001-3018