一种基于波动率和股价联合预测的动态数据驱动算法交易策略

You Liang, A. Thavaneswaran, Alex Paseka, Zimo Zhu, R. Thulasiram
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引用次数: 9

摘要

波动率预测和股价预测在算法交易中起着重要作用。本文首先对波动率和股价进行联合预测,然后将其应用到算法交易中。利用广义双指数平滑法(GDES)和数据驱动指数加权移动平均法(DD-EWMA)分别构建了股票价格区间预测和波动率区间预测。得到了非平稳股票价格序列的多阶跃区间预测。作为一种应用,一步超前区间预测提出了一种新的动态数据驱动算法交易策略。常用的简单移动平均线(SMA)交叉交易策略和布林带交易策略依赖于未知参数(移动平均窗口大小),而窗口大小通常以一种特殊的方式选择。然而,所提出的交易策略不依赖于窗口大小,并且是数据驱动的,即从数据中选择GDES和DD-EWMA的最优平滑常数。在提出的交易策略中,使用训练样本对参数进行调整:GDES价格预测的平滑常数,DD-EWMA波动率预测的平滑常数,以及最大化夏普比率(SR)的调整参数。然后使用测试样本计算累积利润,以使用最优调整参数衡量样本外交易绩效。在一组广泛交易的股票指数上的实证应用表明,所提出的GDES区间预测交易策略能够显著优于大多数股票指数的SMA和买入持有策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Dynamic Data-Driven Algorithmic Trading Strategy Using Joint Forecasts of Volatility and Stock Price
Volatility forecasts and stock price forecasts play major roles in algorithmic trading. In this paper, joint forecasts of volatility and stock price are first obtained and then applied to algorithmic trading. Interval forecasts of stock prices are constructed using generalized double exponential smoothing (GDES) for stock price forecasts and data-driven exponentially weighted moving average (DD-EWMA) for volatility forecasts. Multi-stepahead interval forecasts for nonstationary stock price series are obtained. As an application, one-step-ahead interval forecasts are used to propose a novel dynamic data-driven algorithmic trading strategy. Commonly used simple moving average (SMA) crossover trading strategy and Bollinger bands trading strategy depend on unknown parameters (moving average window sizes) and the window sizes are usually chosen in an ad hoc fashion. However the proposed trading strategy does not depend on the window size, and is data-driven in the sense that the optimal smoothing constants of GDES and DD-EWMA are chosen from the data. In the proposed trading strategy, a training sample is used to tune the parameters: smoothing constant for GDES price forecasts, smoothing constant for DD-EWMA volatility forecasts, and the tuning parameter which maximizes Sharpe ratio (SR). A test sample is then used to compute cumulative profits to measure the out-of-sample trading performance using optimal tuning parameters. An empirical application on a set of widely traded stock indices shows that the proposed GDES interval forecast trading strategy is able to significantly outperform SMA and the buy and hold strategies for the majority of stock indices.
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