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Deep Learning Model for Financial Time Series Prediction

机译:金融时序序列预测的深度学习模型

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Stock market is considered complex, fickle, and dynamic. Undoubtedly, prediction of its price is one of the most challenging tasks in time series forecasting. Traditionally, there are several techniques to effectively predict the next t lag of time series data such as Logistic Regression and Random Forest. With the recent progression in sophisticated machine learning approaches such as deep learning, new algorithms are developed to analyze and forecast time series data. This paper employs Long-Short Term Memory (LSTM) deep learning approach to predict future prices for low, medium, and high risk stocks. To the best of our knowledge, we are proposing an innovating technique to evaluate deep learning and other prediction techniques w.r.t. the stocks’ risk factor. The proposed approach is compared with other traditional algorithms over different periods of training data. The results show that our LSTM approach outperforms other traditional approaches for all stock categories over different time periods. Experimental results illustrate that, for low and medium risk stocks, it is better to use LSTM with long time period of training data. However, for high risk stocks, short time period of training data provides more accurate predictions.
机译:股市被认为是复杂的,善良和动态。毫无疑问,预测其价格是时间序列预测中最具挑战性的任务之一。传统上,有几种技术能够有效地预测时间序列数据的下一个T滞后,例如逻辑回归和随机林。随着最近的复杂机器学习方法,如深度学习,开发了新的算法来分析和预测时间序列数据。本文采用了长期短期记忆(LSTM)深入学习方法,以预测低风险股的未来价格。据我们所知,我们提出了一种评估深度学习和其他预测技术的创新技术W.R.T.股票的危险因素。将所提出的方法与其他传统算法进行比较,不同时期的培训数据。结果表明,我们的LSTM方法在不同的时间段内优于所有库存类别的其他传统方法。实验结果表明,对于低和中等风险库存,最好使用LSTM,长时间的培训数据。但是,对于高风险库存,培训数据的短暂时间段提供更准确的预测。

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