Journal article

A fusion model of HMM, ANN and GA for stock market forecasting

MR Hassan, B Nath, M Kirley

Expert Systems with Applications | PERGAMON-ELSEVIER SCIENCE LTD | Published : 2007

Abstract

In this paper we propose and implement a fusion model by combining the Hidden Markov Model (HMM), Artificial Neural Networks (ANN) and Genetic Algorithms (GA) to forecast financial market behaviour. The developed tool can be used for in depth analysis of the stock market. Using ANN, the daily stock prices are transformed to independent sets of values that become input to HMM. We draw on GA to optimize the initial parameters of HMM. The trained HMM is used to identify and locate similar patterns in the historical data. The price differences between the matched days and the respective next day are calculated. Finally, a weighted average of the price differences of similar patterns is obtained ..

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University of Melbourne Researchers