Adversarial unsupervised domain adaptation based on generative adversarial network for stock trend forecasting

IF 0.9 4区 计算机科学 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Qiheng Wei, Qun Dai
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引用次数: 0

Abstract

Stock trend forecasting, which refers to the prediction of the rise and fall of the next day’s stock price, is a promising research field in financial time series forecasting, with a large quantity of well-performing algorithms and models being proposed. However, most of the studies focus on trend prediction for stocks with a large number of samples, while the trend prediction problem of newly listed stocks with only a small number of samples is neglected. In this work, we innovatively design a solution to the Small Sample Size (SSS) trend prediction problem of newly listed stocks. Traditional Machine Learning (ML) and Deep Learning (DL) techniques are based on the assumption that the available labeled samples are substantial, which is invalid for SSS trend prediction of newly listed stocks. In order to break out of this dilemma, we propose a novel Adversarial Unsupervised Domain Adaptation Network (AUDA-Net), based on Generative Adversarial Network (GAN), ad hoc for SSS stock trend forecasting. Different from the traditional domain adaptation algorithms, we employ a GAN model, which is trained on basis of the target stock dataset, to effectively solve the absence problem of available samples. Notably, AUDA-Net can reasonably and successfully transfer the knowledge learned from the source stock dataset to the newly listed stocks with only a few samples. The stock trend forecasting performance of our proposed AUDA-Net model has been verified through extensive experiments conducted on several real stock datasets of the U.S. stock market. Using stock trend forecasting as a case study, we show that the SSS forecasting results produced by AUDA-Net are favorably comparable to the state-of-the-art.
基于生成对抗网络的无监督域自适应股票趋势预测
股票趋势预测是指预测第二天股价的涨跌,是金融时间序列预测中一个很有前途的研究领域,人们提出了大量性能良好的算法和模型。然而,大多数研究都集中在对样本量大的股票进行趋势预测,而对样本量小的新上市股票的趋势预测问题却被忽视了。在这项工作中,我们创新性地设计了一个新上市股票小样本量(SSS)趋势预测问题的解决方案。传统的机器学习(ML)和深度学习(DL)技术基于可用标记样本是大量的假设,这对于新上市股票的SSS趋势预测是无效的。为了突破这一困境,我们在生成对抗性网络(GAN)的基础上,提出了一种新的对抗性无监督领域自适应网络(AUDA Net),用于SSS股票趋势预测。与传统的领域自适应算法不同,我们采用了基于目标股票数据集训练的GAN模型,以有效地解决可用样本的缺失问题。值得注意的是,AUDA-Net可以合理而成功地将从源股票数据集学习到的知识转移到只需少量样本的新上市股票上。通过在美国股市的几个真实股票数据集上进行的大量实验,验证了我们提出的AUDA-Net模型的股票趋势预测性能。以股票趋势预测为例,我们表明AUDA Net的SSS预测结果与现有技术具有良好的可比性。
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来源期刊
Intelligent Data Analysis
Intelligent Data Analysis 工程技术-计算机:人工智能
CiteScore
2.20
自引率
5.90%
发文量
85
审稿时长
3.3 months
期刊介绍: Intelligent Data Analysis provides a forum for the examination of issues related to the research and applications of Artificial Intelligence techniques in data analysis across a variety of disciplines. These techniques include (but are not limited to): all areas of data visualization, data pre-processing (fusion, editing, transformation, filtering, sampling), data engineering, database mining techniques, tools and applications, use of domain knowledge in data analysis, big data applications, evolutionary algorithms, machine learning, neural nets, fuzzy logic, statistical pattern recognition, knowledge filtering, and post-processing. In particular, papers are preferred that discuss development of new AI related data analysis architectures, methodologies, and techniques and their applications to various domains.
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