Title :
Neuron-adaptive higher order neural-network models for automated financial data modeling
Author :
Zhang, Ming ; Xu, Shuxiang ; Fulcher, John
Author_Institution :
Dept. of Phys., Comput. Sci. & Eng., Newport Univ., Newport News, VA, USA
fDate :
1/1/2002 12:00:00 AM
Abstract :
Real-world financial data is often nonlinear, comprises high-frequency multipolynomial components, and is discontinuous (piecewise continuous). Not surprisingly, it is hard to model such data. Classical neural networks are unable to automatically determine the optimum model and appropriate order for financial data approximation. We address this problem by developing neuron-adaptive higher order neural-network (NAHONN) models. After introducing one-dimensional (1-D), two-dimensional (2-D), and n-dimensional NAHONN models, we present an appropriate learning algorithm. Network convergence and the universal approximation capability of NAHONNs are also established. NAHONN Group models (NAHONGs) are also introduced. Both NAHONNs and NAHONGs are shown to be "open box" and as such are more acceptable to financial experts than classical (closed box) neural networks. These models are further shown to be capable of automatically finding not only the optimum model, but also the appropriate order for specific financial data
Keywords :
economic cybernetics; neural nets; NAHONN; financial data; financial data approximation; financial modeling; neural networks; neural-network groups; neuron-adaptive higher order neural-network; optimum model; piecewise functions; polynomials; Artificial neural networks; Australia; Computer science; Councils; Economic forecasting; Frequency; Neural networks; Polynomials; Predictive models; Two dimensional displays;
Journal_Title :
Neural Networks, IEEE Transactions on