Abstract
Predicting stock price movements is a challenging task for academicians and practitioners. In particular, forecasting price movements in emerging markets seems to be more elusive because they are usually more volatile often accompa-nied by thin trading-volumes and they are susceptible to more manipulation compared to mature markets. Technical analysis of stocks and commodities has become a science on its own; quantitative methods and techniques have been applied by many practitioners to forecast price movements. Lagging and sometimes leading technical indicators pro-vide rich quantitative tools for traders and investors in their attempt to gain advantage when making investment or trading decisions. Artificial Neural Networks (ANN) have been used widely in predicting stock prices because of their capability in capturing the non-linearity that often exists in price movements. Recently, Polynomial Classifiers (PC) have been applied to various recognition and classification application and showed favorable results in terms of recog-nition rates and computational complexity as compared to ANN. In this paper, we present two prediction models for predicting securities’ prices. The first model was developed using back propagation feed forward neural networks. The second model was developed using polynomial classifiers (PC), as a first time application for PC to be used in stock prices prediction. The inputs to both models were identical, and both models were trained and tested on the same data. The study was conducted on Dubai Financial Market as an emerging market and applied to two of the market’s leading stocks. In general, both models achieved very good results in terms of mean absolute error percentage. Both models show an average error around 1.5% predicting the next day price, an average error of 2.5% when predicting second day price, and an average error of 4% when predicted the third day price.
Highlights
Accurate prediction of stock prices presents a challenging task for traders and investors
This paper describes the use of the Polynomial Classifiers (PC) to predict stock prices in the Dubai Financial Market in the United Arab Emirates and compares the results with those obtained by using Artificial Neural Networks (ANN)
Emaar Properties (EMAAR) Figure 1 shows that ANN achieves a small mean absolute error percentage (MAEP) in all three training scenarios
Summary
Accurate prediction of stock prices presents a challenging task for traders and investors. The early Efficient Market Theory (EMT) claims that prices move in a random way and it is not possible to develop an algorithm of any kind that predicts stock prices [1]. Other researchers contradicted this claim and presented considerable evidence showing that stock prices are, to some extent, predictable. The ANN that we used is the standard feed forward architecture trained with the standard back propagation method Since this architecture is widely used and very well known we felt that it would be redundant to explain it here.
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More From: Journal of Intelligent Learning Systems and Applications
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