Abstract

This paper takes 50 ETF options in the options market with high transaction complexity as the research goal. The Random Forest (RF) model, the Long Short-Term Memory network (LSTM) model, and the Support Vector Regression (SVR) model are used to predict 50 ETF price. Firstly, the original quantitative investment strategy is taken as the research object, and the 15 min trading frequency, which is more in line with the actual trading situation, is used, and then the Delta hedging concept of the options is introduced to control the risk of the quantitative investment strategy, to achieve the 15 min hedging strategy. Secondly, the final transaction price, buy price, highest price, lowest price, volume, historical volatility, and the implied volatility of the time segment marked with 50 ETF are the seven key factors affecting the price of 50 ETF. Then, two different types of LSTM-SVR models, LSTM-SVR I and LSTM-SVR II, are used to predict the final transaction price of the 50 ETF in the next time segment. In LSTM-SVR I model, the output of LSTM and seven key factors are combined as the input of SVR model. In LSTM-SVR II model, the hidden state vectors of LSTM and seven key factors are combined as the inputs of the SVR model. The results of the two LSTM-SVR models are compared with each other, and the better one is applied to the trading strategy. Finally, the benefit of the deep learning-based quantitative investment strategy, the resilience, and the maximum drawdown are used as indicators to judge the pros and cons of the research results. The accuracy and deviations of the LSTM-SVR prediction models are compared with those of the LSTM model and those of the RF model. The experimental results show that the quantitative investment strategy based on deep learning has higher returns than the traditional quantitative investment strategy, the yield curve is more stable, and the anti-fall performance is better.

Highlights

  • Financial innovation improvement drives the rise of quantitative trading in the Chinese financial market

  • The logic of the quantitative investment strategy used in this paper is as follows: (1) The time series of the IV-HV difference between the implied volatility (IV) and the historical volatility (HV) is calculated at 14:55 on the options expiration date

  • The quantitative investment strategy designed in this paper has particular research value

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Summary

Introduction

Financial innovation improvement drives the rise of quantitative trading in the Chinese financial market. Instead of introducing numerous premise assumptions, the adoption of deep learning techniques makes it possible to directly hand over rules mining tasks to computers In this way, the study of stocks, futures and options price behavior is essentially a predictive work that is related to the future price trend of trading objects in the market. The Shanghai 50 ETF options contract is a standardized contract established by the Shanghai Stock Exchange to provide the buyer with the right to buy or sell the “Shanghai 50 Trading Open Index Securities Investment Fund” at a specific price within a certain period of time. When the price of the 50 ETF at that time is not within the range of the strike price of the options (less than the strike price of the put options or greater than the strike price of the call options), the “stop loss liquidation”

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