基于两个目标的端到端多任务高频价格运动预测方法

Q4 Engineering
Yulian Ma, Wenquan Cui
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引用次数: 0

摘要

高频价格走势预测是指在短时间内(如一分钟)预测价格变化的方向(如上涨、不变或下跌)。利用历史高频交易数据预测价格走势具有一定的挑战性,因为它们之间的关系具有噪声、非线性和复杂性。我们提出了一种具有两个目标的端到端多任务方法来改进高频价格运动预测。具体而言,该方法引入了一个辅助目标(高频价格变化率),该目标与主目标(高频价格运动)高度相关,有助于改进高频价格运动预测。此外,每个任务都有一个基于递归神经网络和卷积神经网络的特征提取器,以学习历史交易数据与两个目标之间有噪声、非线性和复杂的时空关系。此外,每个任务的共享部分和特定任务部分明确分离,以减轻多任务方法可能带来的负迁移。此外,采用梯度平衡方法,利用两个目标之间的密切关系,过滤从不一致的噪声中学习到的时空依赖关系,保留从一致的真信息中学习到的依赖关系,提高高频价格运动预测。在真实数据集上的实验结果表明,该方法利用高度相关的辅助目标帮助主任务的特征提取器学习时空依赖关系,具有更强的泛化能力,提高了高频价格走势预测的准确性。此外,辅助目标(价格变化的高频率)不仅提高了整个特征提取器学习的整体时空依赖关系的泛化,而且提高了特征提取器不同部分学习的时空依赖关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An end-to-end multitask method with two targets for high-frequency price movement prediction
: High-frequency price movement prediction is to predict the direction ( e. g. up , unchanged or down ) of the price change in short time ( e. g. one minute ) . It is challenging to use historical high-frequency transaction data to predict price movement because their relation is noisy , nonlinear and complex. We propose an end-to-end multitask method with two targets to improve high-frequency price movement prediction. Specifically , the proposed method introduces an auxiliary target ( high-frequency rate of price change ), which is highly related with the main target ( high-frequency price movement ) and is useful to improve the high-frequency price movement prediction. Moreover , each task has a feature extractor based on recurrent neural network and convolutional neural network to learn the noisy , nonlinear and complex temporal-spatial relation between the historical transaction data and the two targets. Besides , the shared parts and task-specific parts of each task are separated explicitly to alleviate the potential negative transfer caused by the multitask method. Moreover , a gradient balancing approach is adopted to use the close relation between two targets to filter the temporal-spatial dependency learned from the inconsistent noise and retain the dependency learned from the consistent true information to improve the high-frequency price movement prediction. The experimental results on real-world datasets show that the proposed method manages to utilize the highly related auxiliary target to help the feature extractor of the main task to learn the temporal-spatial dependency with more generalization to improve high-frequency price movement prediction. Moreover , the auxiliary target ( high-frequency rate of the price change ) not only improves the generalization of overall temporal-spatial dependency learned by the whole feature extractor but also improve temporal-spatial dependency learned by the different parts of the feature extractor.
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来源期刊
中国科学技术大学学报
中国科学技术大学学报 Engineering-Mechanical Engineering
CiteScore
0.40
自引率
0.00%
发文量
5692
期刊介绍: JUSTC is the multidisciplinary flagship journal of University of Science and Technology of China. Aiming at presenting highly selective articles in the world (upper 20% in any specific subject area). JUSTC considers and publishes article types of Research Articles, Reviews, Letters, and Perspectives. All articles are available as open access immediately upon publication at no cost to contributing authors.
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