Short term forecasting with support vector machines and application to stock price prediction [2]
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info:eu-repo/semantics/closedAccess
Özet
Financial time series are complex, non stationary and deterministically chaotic. Therefore, it is impossible to forecast with parametric models such as regression. Instead of parametric models, we propose two techniques and compare those with each other. They are data-driven non parametric models. Two different models are assumed with different inputs. Our assumption is that the future value of a stock price depends on the financial indicators although there is no parametric model to explain this relationship. This relationship comes from the technical analysis. Comparison shows that SVR over performs the multi layer perceptron (MLP) networks for a short term prediction. © 2008 Elsevier B.V., All rights reserved.
Açıklama
Smart Engineering System Design: Neural Networks, Fuzzy Logic, Evolutionary Programming, Complex Systems and Artificial Life - Proceedings of the Artificial Neural Networks in Engineering Conference -- St. Louis, MO. -- 62934
Anahtar Kelimeler
Algorithms, Backpropagation, Computational methods, Inventory control, Lagrange multipliers, Multilayer neural networks, Problem solving, Regression analysis, Time series analysis, Chaotic systems, Parametric models, Support vector machines (SVM), Support vector regression (SVR), Finance
Kaynak
Intelligent Engineering Systems Through Artificial Neural Networks
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