The performance of the investment return prediction models: Theory and evidence

N. Ralević, N. Glisovic, V. Djakovic, Goran B. Andjelic
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引用次数: 3

Abstract

The market structure has been adjusted in order to be as simple as possible in sense of its economic components. The aim of the investment return prediction is constructing as good models of the market movement as possible. As for as the stock market is concerned, the price rise of some stocks indicate the good results of the management of that company, while the price fall shows the inadequate management. Prompt and accurate information of the market movement enable the managers to take some measures which lead to optimal investment decision. The Autoregressive Moving Average (ARIMA) model is one of the most frequently linear models of the time series used for the investment return prediction. The prediction researches in the last years from the areas of Artificial Neural Networks (ANNs) indicate that ANNs with a combination of other prediction models give better prediction results. This research aim is to introduce a hybrid model ARIMA fuzzy-neural network for the prediction of the stock market index BELEX15 values. The research results indicate that the linear model ARIMA and fuzzy ANNs exhibit more superior investment return prediction performances.
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投资收益预测模型的绩效:理论与证据
调整了市场结构,以便使其经济组成部分尽可能简单。投资回报预测的目的是建立尽可能好的市场运动模型。就股票市场而言,一些股票的价格上涨表明该公司管理良好,而价格下跌则表明该公司管理不善。及时准确的市场动态信息使管理者能够采取一些措施,从而做出最优的投资决策。自回归移动平均(ARIMA)模型是最常用于投资收益预测的时间序列线性模型之一。近年来人工神经网络领域的预测研究表明,人工神经网络与其他预测模型相结合可以获得更好的预测结果。本文的研究目的是引入一种混合模型ARIMA模糊神经网络,用于股票市场指数BELEX15值的预测。研究结果表明,线性模型ARIMA和模糊神经网络具有更优越的投资收益预测性能。
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