基于信息熵和人工神经网络的股票价格预测

Zang Yeze, Wang Yiying
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引用次数: 6

摘要

股票市场是金融体系最重要的组成部分之一。它引导投资者的资金来支持联营公司的活动和发展。因此,在金融系统稳定、投资策略和市场风险控制方面,理解和建模股票价格动态变得至关重要。为了更好地模拟股票价格的时间动态,我们提出了一个结合信息理论和人工神经网络(ANN)的机器学习框架。该方法创造性地利用信息熵来告知非线性因果关系以及股票相关性,并利用它来促进人工神经网络时间序列建模。我们对谷歌、亚马逊、Facebook和苹果股价的分析证明了这种机器学习框架的可行性。
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Stock Price Prediction Based on Information Entropy and Artificial Neural Network
Stock market is one of the most important components of the financial system. It directs money from investors to support the activity and development of the associated company. Therefore, understanding and modeling the stock price dynamics become critically important, in terms of financial system stability, investment strategy, and market risk control. To better model the temporal dynamics of stock price, we propose a combined machine learning framework with information theory and Artificial Neural Network (ANN). This method creatively uses information entropy to inform non-linear causality as well as stock relevance and uses it to facilitate the ANN time series modeling. Our analysis with Google, Amazon, Facebook, and Apple stock prices demonstrates the feasibility of this machine learning framework.
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