Daily Stock Price Prediction Using Fuzzy Model

Autor: Hee Soo Hwang
Rok vydání: 2008
Předmět:
Zdroj: The KIPS Transactions:PartB. :603-608
ISSN: 1598-284X
DOI: 10.3745/kipstb.2008.15-b.6.603
Popis: In this paper an approach to building fuzzy model to predict daily open, close, high, and low stock prices is presented. One of prior problems in building a stock prediction model is to select most effective indicators for the stock prediction. The problem is overcome by the selection of information used in the analysis of stick-chart as the input variables of our fuzzy model. The fuzzy rules have the premise and the consequent, in which they are composed of trapezoidal membership functions, and nonlinear equations, respectively. DE(Differential Evolution) searches optimal fuzzy rules through an evolutionary process. To evaluate the effectiveness of the proposed approach numerical example is considered. The fuzzy models to predict open, high, low, and close prices of KOSPI(KOrea composite Stock Price Index) on a daily basis are built, and their performances are demonstrated and compared with those of neural network.Keywords:Fuzzy Model, Time Series Prediction, Differential Evolution, Nonlinear Model, Stock Prediction
Databáze: OpenAIRE