Indonesia infrastructure and consumer stock portfolio prediction using artificial neural network backpropagation

S. Prashant Mahasagara, A. Alamsyah, B. Rikumahu
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引用次数: 15

Abstract

Artificial Neural Network (ANN) method is increasingly popular to build predictive model that generated small error prediction. To have a good model, ANN needs large dataset as an input. ANN backpropagation is a gradient decrease method to minimize the output error squared. Stock price movements are suitable with ANN requirement: it is a large data set because stock price is recorded up to every seconds, usually called high frequency data. The implementation of stock price prediction using ANN approach is quite new. The predictive model help investor in building stock portfolio and their decision making process. Buying some stocks in portfolio decrease diversified risk and increases the chance of higher return. In this paper, we show how to generate prediction model using artificial neural network backpropagation of stock price and forming portfolio with predicted price that bring prediction of the portfolio with the smallest error. The data set we use is historical stock price data from ten different company stocks of infrastructure and consumer sector Indonesia Stock Exchage. The results is for lower risk condition, ANN predictive model gives higher expected return than the return from real condition, while for higher risk, the return from the real condition is higher than the ANN predictive model.
利用人工神经网络反向传播预测印尼基础设施和消费股投资组合
人工神经网络(Artificial Neural Network, ANN)方法在建立小误差预测模型方面越来越受欢迎。为了得到一个好的模型,人工神经网络需要大量的数据集作为输入。人工神经网络反向传播是一种梯度递减方法,以最小化输出误差的平方。股票价格变动适合人工神经网络的要求:它是一个大的数据集,因为股票价格每秒钟记录一次,通常称为高频数据。利用人工神经网络方法实现股票价格预测是一种新的方法。该预测模型有助于投资者建立股票投资组合并进行决策。在投资组合中购买一些股票可以减少分散风险,增加获得高回报的机会。本文介绍了如何利用人工神经网络对股票价格反向传播生成预测模型,并以预测价格形成投资组合,从而使投资组合的预测误差最小。我们使用的数据集是来自印度尼西亚证券交易所基础设施和消费部门的十家不同公司股票的历史股价数据。结果表明,对于风险较低的情况,人工神经网络预测模型给出的期望收益高于真实情况下的收益;对于风险较高的情况,人工神经网络预测模型给出的真实情况下的收益高于人工神经网络预测模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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