股票价格预测使用支持向量回归对每日和分钟的价格

Bruno Miranda Henrique, Vinicius Amorim Sobreiro, Herbert Kimura
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引用次数: 177

摘要

股票价格预测系统的目的是为金融市场经营者提供异常收益,并作为风险管理工具的基础。尽管有效市场假说(EMH)指出,不可能始终如一地预测市场走势,但在股票交易机制的开发中,使用采用机器学习算法的计算密集型系统越来越普遍。几项使用每日股票价格的研究,提出了在不考虑新模型更新的情况下,在固定时期训练的预测系统应用程序。在这种情况下,本研究使用一种称为支持向量回归(SVR)的机器学习技术来预测大市值和小市值以及三个不同市场的股票价格,采用每日和最新频率的价格。测量了模型的预测误差,并与EMH提出的随机游走模型进行了比较。结果表明,支持向量回归算法具有较强的预测能力,特别是在采用定期更新模型的策略时。也有指示性结果表明,在波动性较低的时期,预测精度有所提高。
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Stock price prediction using support vector regression on daily and up to the minute prices

The purpose of predictive stock price systems is to provide abnormal returns for financial market operators and serve as a basis for risk management tools. Although the Efficient Market Hypothesis (EMH) states that it is not possible to anticipate market movements consistently, the use of computationally intensive systems that employ machine learning algorithms is increasingly common in the development of stock trading mechanisms. Several studies, using daily stock prices, have presented predictive system applications trained on fixed periods without considering new model updates. In this context, this study uses a machine learning technique called Support Vector Regression (SVR) to predict stock prices for large and small capitalisations and in three different markets, employing prices with both daily and up-to-the-minute frequencies. Prediction errors are measured, and the model is compared to the random walk model proposed by the EMH. The results suggest that the SVR has predictive power, especially when using a strategy of updating the model periodically. There are also indicative results of increased predictions precision during lower volatility periods.

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来源期刊
Journal of Finance and Data Science
Journal of Finance and Data Science Mathematics-Statistics and Probability
CiteScore
3.90
自引率
0.00%
发文量
15
审稿时长
30 days
期刊最新文献
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