A Stock Market Trend Prediction System Using a Hybrid Decision Tree-Neuro-Fuzzy System

B. Nair, N. M. Dharini, V. Mohandas
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引用次数: 39

Abstract

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.
基于混合决策树-神经-模糊系统的股票市场趋势预测系统
股票市场预测是股票交易者和应用研究人员非常感兴趣的问题。开发全自动股票市场预测系统的主要问题是:从股票市场数据中提取特征,选择预测精度最高的特征,选择的特征集降维,预测系统的准确性和鲁棒性。本文提出了一种自动决策树自适应神经模糊混合自动股票市场趋势预测系统。提出的系统使用技术分析(传统上由股票交易者使用)进行特征提取,并使用决策树进行特征选择。然后对选定的特征进行降维,然后将降维后的数据集应用于自适应神经模糊系统,用于次日股市趋势预测。该系统在四大国际股票市场进行了测试。结果表明,与不进行特征选择和降维的独立决策树系统和基于ANFIS的系统相比,本文提出的混合系统具有更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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