SSTP: Stock Sector Trend Prediction with Temporal-Spatial Network

IF 2 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Information Technology and Control Pub Date : 2023-09-26 DOI:10.5755/j01.itc.52.3.33360
Shuo Yin, Youwei Gao, Shuai Nie, Junbao Li
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Abstract

In financial big data field, most existing work of stock prediction has focused on the prediction of a single stock trend. However, it is challenging to predict a stock price series due to its drastic volatility. While the stock sector is a group of stocks belonging to the same sector, and the stock sector index is the weighted sum of the prices of all the stocks in the sector. Therefore the trend of stock sector is more stable and more feasible to predict than that of a single stock. In this paper, we propose a new method named Stock Sector Trend Prediction (SSTP) to solve the problem of predicting stock sector trend. In SSTP method, we adopt the Relative Price Strength (RPS) to describe the trend of the stock sector, which is the relative rank of stock sector trend. In order to learn the intrinsic probability distribution of the stock sector index series, we construct the multi-scale RPS time series and build multiple independent fully-connected stock sector relation graphs based on the real relationship among stock sectors. Then, we propose a Temporal-spatial Network (TSN) to extract the temporal features from the multi-scale RPS series and the spatial features from the stock sector relation graphs. Finally, the TSN predicts and ranks the trends of the stock sector trend with the temporal-spatial features. The experimental results on the real-world dataset validate the effectiveness of the proposed SSTP method for the stock sector trend prediction.
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基于时空网络的股票板块趋势预测
在金融大数据领域,现有的股票预测工作大多集中在对单一股票走势的预测上。然而,由于股票价格系列的剧烈波动,预测它是具有挑战性的。而股票行业是属于同一行业的一组股票,股票行业指数是该行业所有股票价格的加权和。因此,股票板块的走势比单一股票的走势更稳定,更易于预测。本文提出了一种新的股票行业趋势预测方法(SSTP)来解决股票行业趋势预测问题。在SSTP方法中,我们采用相对价格强度(Relative Price Strength, RPS)来描述股票行业的趋势,它是股票行业趋势的相对等级。为了了解股票行业指数序列的内在概率分布,我们构造了多尺度RPS时间序列,并基于真实的股票行业之间的关系,构建了多个独立的全连通股票行业关系图。然后,我们提出了一个时空网络(TSN)来提取多尺度RPS序列的时间特征和股票行业关系图的空间特征。最后,TSN对股票行业趋势的时空特征进行预测和排序。在实际数据集上的实验结果验证了所提出的SSTP方法对股票行业趋势预测的有效性。
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来源期刊
Information Technology and Control
Information Technology and Control 工程技术-计算机:人工智能
CiteScore
2.70
自引率
9.10%
发文量
36
审稿时长
12 months
期刊介绍: Periodical journal covers a wide field of computer science and control systems related problems including: -Software and hardware engineering; -Management systems engineering; -Information systems and databases; -Embedded systems; -Physical systems modelling and application; -Computer networks and cloud computing; -Data visualization; -Human-computer interface; -Computer graphics, visual analytics, and multimedia systems.
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