Title :
Setting up performance surface of an artificial neural network with genetic algorithm optimization: in search of an accurate and profitable prediction of stock trading
Author_Institution :
Dept. Finance, Ecole Superieure de Commerce de Dijon, France
Abstract :
This paper considers a design framework of a computational experiment in finance. The examination of relationships between statistics used for economic forecasts evaluation and profitability of investment decisions reveals that only the ´degree of improvement over efficient prediction´ shows robust links with profitability. If profits are not observable, this measure is proposed as an evaluation criterion for an economic prediction. Also combined with directional accuracy, it could be used in an estimation technique for economic behavior, as an alternative to conventional least squares. Model discovery and performance surface optimization with genetic algorithm demonstrate profitability improvement with an inconclusive effect on statistical criteria.
Keywords :
economic forecasting; genetic algorithms; investment; neural nets; profitability; statistical analysis; stock markets; artificial neural network; economic behavior estimation; economic forecast evaluation; economic forecast profitability; economic prediction; financial computational experiment; genetic algorithm optimization; investment decision profitability; least squares methods; model discovery; performance surface optimization; statistical criteria; statistics; stock trading prediction; Artificial neural networks; Computer networks; Economic forecasting; Finance; Genetic algorithms; Intelligent networks; Investments; Predictive models; Profitability; Statistics;
Conference_Titel :
Evolutionary Computation, 2004. CEC2004. Congress on
Print_ISBN :
0-7803-8515-2
DOI :
10.1109/CEC.2004.1330963