OMX Vilnius akcijų indekso prognozavimas naudojant dirbtinius neuronų tinklus
Author(s) -
Audrius Dzikevičius,
Neringa Stabužytė
Publication year - 2012
Publication title -
verslas teorija ir praktika
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.369
H-Index - 17
eISSN - 1822-4202
pISSN - 1648-0627
DOI - 10.3846/btp.2012.34
Subject(s) - predictability , artificial neural network , profitability index , computer science , stock market index , stock market , econometrics , multilayer perceptron , linear regression , index (typography) , perceptron , stock market prediction , market timing , artificial intelligence , machine learning , statistics , mathematics , initial public offering , economics , finance , world wide web , paleontology , horse , biology
Predicting a stock market is a challenging task for every investor. Stock market contains difficult relations and its behavior is heavily forecasted. As the investment's profitability is directly related to the market's predictability, the need for more accurate and sophisticated forecasting techniques arises. The academic literature is showing a growing interest in implementing non- linear techniques in a time series prediction. The paper goes through the process of creating a time series prediction model for OMX Vilnius stock index using artificial neural network approach. A multi layer perceptron model is applied in order to make periodical daily and monthly forecasts for both the actual index future value and the direction of the index. The neural network is trained using back-propagation method, several topologies are analyzed and the most suitable is selected. The method accuracy is compared to several traditional statistical methods (moving averages and linear regression)
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