Deep learning with stock indicators and two-dimensional principal component analysis for closing price prediction system

Tingwei Gao, Xiu Li, Y. Chai, Youhua Tang
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引用次数: 18

Abstract

The stock market is an important component in the current economic market. And stock price prediction has recently garnered significant interest among investment brokers, individual investors and researchers. In general, stock market is very complex nonlinear dynamic system. Accordingly, accurate prediction of stock market is a very challenging task, owing to the inherent noisy environment and high volatility related to outside factors. In this paper, we focus on deep learning method to achieve high precision in stock market forecast. And a deep belief networks(DBNs), which is a kind of deep learning algorithm model, coupled with stock technical indicators(STIs) and two-dimensional principal component analysis((2D)2PCA) is introduced as a novel approach to predict the closing price of stock market. A comparison experiment is also performed to evaluate this model.
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基于股票指标和二维主成分分析的深度学习收盘价预测系统
股票市场是当前经济市场的重要组成部分。股票价格预测最近引起了投资经纪人、个人投资者和研究人员的极大兴趣。总的来说,股票市场是一个非常复杂的非线性动态系统。因此,由于股票市场固有的噪声环境和与外界因素相关的高波动性,对股票市场进行准确预测是一项非常具有挑战性的任务。本文主要研究深度学习方法在股票市场预测中实现高精度。并将深度学习算法模型——深度信念网络(DBNs)与股票技术指标(STIs)和二维主成分分析(2D)2PCA相结合,提出了一种预测股市收盘价格的新方法。并通过对比实验对该模型进行了评价。
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