Article ID: | iaor20033079 |
Country: | Lithuania |
Volume: | 13 |
Issue: | 4 |
Start Page Number: | 465 |
End Page Number: | 484 |
Publication Date: | Oct 2002 |
Journal: | Informatica |
Authors: | Plikynas Darius, Simanauskas Leonas, Buda Sigitas |
Keywords: | neural networks, forecasting: applications, statistics: multivariate |
The presented article is about a research using artificial neural network (ANN) methods for compound (technical and fundamental) analysis and prognosis of Lithuania's National Stock Exchange (LNSE) indices LITIN, LITIN-A and LITIN-VVP. We employed initial pre-processing (analysis for entropy and correlation) for filtering out model input variables (LNSE indices, macroeconomic indicators, Stock Exchange indices of other countries such as the USA – Dow Jones and S&P, EU – Eurex, Russia – RTS). Investigations for the best approximation and forecasting capabilities were performed using different backpropagation ANN learning algorithms, configurations, iteration numbers, data form-factors, etc. A wide spectrum of different results has shown a high sensitivity to ANN parameters. ANN autoregressive, autoregressive causative and causative trend model performances were compared in the approximation and forecasting by a linear discriminant analysis.