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DATA PREPROCESSING METHODS FOR INTERVAL BASED NEURAL NETWORK PREDICTION
Journal
Environment. Technology. Resources. Proceedings of the International Scientific and Practical Conference
Date Issued
2007
DOI
10.17770/etr2007vol1.1746
Abstract
The paper examines a task of forecasting stock prices of Riga Stock exchange by the use of interval value prediction approach, which is carried out by modified Kohonen neural network learning algorithm. The data preprocessing methods are analyzed and implemented here to solve stock prices prediction task. The proposed data preprocessing methods has been experimentally tested with two types of artificial neural networks.