Application of Neural Network Methods in the Prediction of Stock Markets


Autoria(s): Kornev, Vladimir
Data(s)

23/01/2008

23/01/2008

2003

Resumo

The purpose of the research is to define practical profit which can be achieved using neural network methods as a prediction instrument. The thesis investigates the ability of neural networks to forecast future events. This capability is checked on the example of price prediction during intraday trading on stock market. The executed experiments show predictions of average 1, 2, 5 and 10 minutes’ prices based on data of one day and made by two different types of forecasting systems. These systems are based on the recurrent neural networks and back propagation neural nets. The precision of the predictions is controlled by the absolute error and the error of market direction. The economical effectiveness is estimated by a special trading system. In conclusion, the best structures of neural nets are tested with data of 31 days’ interval. The best results of the average percent of profit from one transaction (buying + selling) are 0.06668654, 0.188299453, 0.349854787 and 0.453178626, they were achieved for prediction periods 1, 2, 5 and 10 minutes. The investigation can be interesting for the investors who have access to a fast information channel with a possibility of every-minute data refreshment.

Identificador

http://www.doria.fi/handle/10024/35159

Idioma(s)

en

Palavras-Chave #Artificial Intelligence #Neural Network #Finance #Forecasting #Evolutionary Programming #Stock Market.
Tipo

Master's thesis