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A study on novel filtering and relationship between input-features and target-vectors in a deep learning model for stock price prediction

机译:股价预测深层学习模型中的新型滤波与靶向与目标向量的关系研究

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摘要

From past to present, the prediction of stock price in stock market has been a knotty problem. Many researchers have made various attempts and studies to predict stock prices. The prediction of stock price in stock market has been of concern to researchers in many disciplines, including economics, mathematics, physics, and computer science. This study intends to learn fluctuation of stock prices in stock market by using recently spotlighted techniques of deep learning to predict future stock price. In previous studies, we have used price-based input-features to measure performance changes in deep learning models. Results of this studies have revealed that the performance of stock price models would change according to varied input-features configured based on stock price. Therefore, we have concluded that more novel input-feature in deep learning model is needed to predict patterns of stock price fluctuation more precisely. In this paper, for predicting stock price fluctuation, we design deep learning model using 715 novel input-features configured on the basis of technical analyses. The performance of the prediction model was then compared to another model that employed simple price-based input-features. Also, rather than taking randomly collected set of stocks, stocks of a similar pattern of price fluctuation were filtered to identify the influence of filtering technique on the deep learning model. Finally, we compared and analyzed the performances of several models using different configuration of input-features and target-vectors.
机译:从过去到现在,股票市场股票价格的预测一直是一个棘手的问题。许多研究人员提出了各种各样的尝试和研究,以预测股价。在股票市场的股票价格预测是对许多学科的研究人员的关注,包括经济学,数学,物理和计算机科学。本研究打算通过使用最近的深入学习技术来学习股票市场的股票价格波动,以预测未来股价。在以前的研究中,我们使用了基于价格的输入 - 来测量深度学习模型中的性能变化。该研究的结果表明,股票价格模型的性能将根据基于股票价格配置的各种输入功能而变化。因此,我们已经得出结论,需要更深入学习模型中的更多新型输入特征来预测股票价格波动模式更准确地说。在本文中,为了预测股票价格波动,我们使用在技术分析的基础上配置的715个新型输入功能设计深度学习模型。然后将预测模型的性能与采用简单的基于价格的输入 - 特征的模型进行比较。此外,还没有采取随机收集的库存集,过滤了类似的价格波动模式的股票,以确定过滤技术对深度学习模型的影响。最后,我们使用不同配置的输入 - 特征和目标向量进行了比较和分析了多种模型的性能。

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