Stock market prediction is of great interest to stock traders and applied researchers. Main issues in developing a fully automated stock market prediction system are: feature extraction from the stock market data, feature selection for highest prediction accuracy, the dimensionality reduction of the selected feature set and the accuracy and robustness of the prediction system. In this paper, an automated decision tree-adaptive neuro-fuzzy hybrid automated stock market trend prediction system is proposed. The proposed system uses technical analysis (traditionally used by stock traders) for feature extraction and decision tree for feature selection. Selected features are then subjected to dimensionality reduction and the reduced dataset is then applied to the adaptive neuro-fuzzy system for the next-day stock market trend prediction. The proposed system is tested on four major international stock markets. The results show that the proposed hybrid system produces much higher accuracy when compared to stand-alone decision tree based system and ANFIS based system without feature selection and dimensionality reduction. © 2010 IEEE.
cited By (since 1996)2; Conference of org.apache.xalan.xsltc.dom.DOMAdapter@695a8930 ; Conference Date: org.apache.xalan.xsltc.dom.DOMAdapter@36e4e459 Through org.apache.xalan.xsltc.dom.DOMAdapter@6d4bab36; Conference Code:83357
Dr. Binoy B. Nair, Dharini, N. M., and Mohandas, V. P., “A stock market trend prediction system using a hybrid decision tree-neuro-fuzzy system”, in Proceedings - 2nd International Conference on Advances in Recent Technologies in Communication and Computing, ARTCom 2010, Kottayam, 2010, pp. 381-385.