Intraday trend prediction of stock indices with machine learning approaches

IF 1 4区 经济学 Q4 BUSINESS
Pan Tang, Xin Tang, Wentao Yu
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引用次数: 0

Abstract

Abstract In recent years, as research at the intersection of machine learning and finance has grown, predicting stock price movements has become a particularly intriguing issue. Current research focuses primarily on using historical data of the previous day to predict stock movements for the following day, whereas fewer studies use the trading day’s opening data to predict market movements for the current day. We predict intraday price movements of the SSE-50 (Shanghai Securities 50 Index) using stock market opening data as input. Specifically, decision tree, extreme gradient boosting (XGBoost), random forest, support vector machines (SVM), and long-short-term memory are developed to predict the movements of the SSE-50 index utilizing opening price data of various time intervals. We also design three trading strategies when different time frequencies of data are used. At the same time-frequency, the results demonstrate that SVM with Gaussian and linear kernels outperform others. The forecasting accuracy at 10-min frequency approaches 70%, which is close to the results at longer time intervals, indicating that intraday trend can be determined by opening price fluctuations and the first 10-min data contains sufficient information to predict the trend for the entire trading day. In addition, trading methods based on the forecast of daily, weekly, and monthly SSE-50 price movement outperform buy-and-hold strategies. Daily trading performs better than the other two strategies. The outcomes of this research can expand the use of machine learning in quantitative trading and enrich intraday trading techniques further.
用机器学习方法预测股票指数的盘中趋势
摘要近年来,随着机器学习和金融交叉研究的发展,预测股价走势已成为一个特别有趣的问题。目前的研究主要集中在使用前一天的历史数据来预测第二天的股票走势,而较少的研究使用交易日的开盘数据来预测当天的市场走势。我们使用股市开盘数据作为输入,预测SSE-50(上证50指数)的盘中价格走势。具体而言,利用不同时间间隔的开盘价格数据,开发了决策树、极端梯度提升(XGBoost)、随机森林、支持向量机(SVM)和长短期记忆来预测SSE-50指数的走势。当使用不同时间频率的数据时,我们还设计了三种交易策略。在相同的时频条件下,结果表明,具有高斯核和线性核的SVM优于其他SVM。10分钟频率的预测准确率接近70%,这与较长时间间隔的结果接近,表明盘中趋势可以通过开盘价格波动来确定,前10分钟的数据包含足够的信息来预测整个交易日的趋势。此外,基于每日、每周和每月SSE-50价格走势预测的交易方法优于买入和持有策略。每日交易表现优于其他两种策略。这项研究的结果可以扩大机器学习在量化交易中的应用,并进一步丰富日内交易技术。
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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来源期刊
Engineering Economist
Engineering Economist ENGINEERING, INDUSTRIAL-OPERATIONS RESEARCH & MANAGEMENT SCIENCE
CiteScore
2.00
自引率
0.00%
发文量
14
审稿时长
>12 weeks
期刊介绍: The Engineering Economist is a refereed journal published jointly by the Engineering Economy Division of the American Society of Engineering Education (ASEE) and the Institute of Industrial and Systems Engineers (IISE). The journal publishes articles, case studies, surveys, and book and software reviews that represent original research, current practice, and teaching involving problems of capital investment. The journal seeks submissions in a number of areas, including, but not limited to: capital investment analysis, financial risk management, cost estimation and accounting, cost of capital, design economics, economic decision analysis, engineering economy education, research and development, and the analysis of public policy when it is relevant to the economic investment decisions made by engineers and technology managers.
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