通过神经网络预测CSI300期货高频交易量

Xiaojie Xu, Yun Zhang
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引用次数: 5

摘要

对于金融市场的决策者和参与者来说,金融指数的交易量预测是一个重要的问题。本研究旨在解决基于沪深300指数附近期货的这一预测问题,利用从期货推出之日起至期货成分股全部做空大约两年后每分钟记录的高频数据,这一时间段的交易活动显著增加。设计/方法/方法为了回答以下问题,本研究采用神经网络对沪深300指数近期期货不规则交易量序列进行建模:研究是否能够利用交易量序列的滞后进行预测;如果是这样,预测能走多远,预测能有多准确;本研究是否可以利用沪深300现货和首远期货交易量的预测信息来提高预测的准确性,以及相应的幅度是多少;模型有多复杂;它的预测有多可靠?研究结果表明,利用1-20分钟前的交易量数据,可以构建一个包含10个隐藏神经元的简单神经网络模型,对沪深300指数近期期货的交易量进行稳健预测。该模型的均方根误差约为955个合约。利用CSI300现货和第一个远期期货交易量的额外预测信息可以进一步提高预测准确性,改善幅度约为1-2%。当沪深300指数附近期货的交易量接近于零时,这种好处尤为显著。另一个好处是,可以通过提前1-30分钟的交易量数据生成预测,但代价是模型变得更加复杂,隐藏了更多的神经元。本研究结果可用于设计金融指数交易系统和平台、监测系统性金融风险、构建金融指数价格预测等多个方面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
High-frequency CSI300 futures trading volume predicting through the neural network
PurposeFor policymakers and participants of financial markets, predictions of trading volumes of financial indices are important issues. This study aims to address such a prediction problem based on the CSI300 nearby futures by using high-frequency data recorded each minute from the launch date of the futures to roughly two years after constituent stocks of the futures all becoming shortable, a time period witnessing significantly increased trading activities.Design/methodology/approachIn order to answer questions as follows, this study adopts the neural network for modeling the irregular trading volume series of the CSI300 nearby futures: are the research able to utilize the lags of the trading volume series to make predictions; if this is the case, how far can the predictions go and how accurate can the predictions be; can this research use predictive information from trading volumes of the CSI300 spot and first distant futures for improving prediction accuracy and what is the corresponding magnitude; how sophisticated is the model; and how robust are its predictions?FindingsThe results of this study show that a simple neural network model could be constructed with 10 hidden neurons to robustly predict the trading volume of the CSI300 nearby futures using 1–20 min ahead trading volume data. The model leads to the root mean square error of about 955 contracts. Utilizing additional predictive information from trading volumes of the CSI300 spot and first distant futures could further benefit prediction accuracy and the magnitude of improvements is about 1–2%. This benefit is particularly significant when the trading volume of the CSI300 nearby futures is close to be zero. Another benefit, at the cost of the model becoming slightly more sophisticated with more hidden neurons, is that predictions could be generated through 1–30 min ahead trading volume data.Originality/valueThe results of this study could be used for multiple purposes, including designing financial index trading systems and platforms, monitoring systematic financial risks and building financial index price forecasting.
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