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Stock Market Prediction with Multiple Regression, Fuzzy Type-2 Clustering and Neural Networks

机译:股市预测多元回归,模​​糊类型2聚类和神经网络

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Stock market forecasting research offers many challenges and opportunities, with the forecasting of individual stocks or indexes focusing on forecasting either the level (value) of future market prices, or the direction of market price movement. A three-stage stock market prediction system is introduced in this article. In the first phase, Multiple Regression Analysis is applied to define the economic and financial variables which have a strong relationship with the output. In the second phase, Differential Evolution-based type-2 Fuzzy Clustering is implemented to create a prediction model. For the third phase, a Fuzzy type-2 Neural Network is used to perform the reasoning for future stock price prediction. The results of the network simulation show that the suggested model outperforms traditional models for forecasting stock market prices. 2011 Published by Elsevier B.V.
机译:股票市场预测研究提供了许多挑战和机遇,预测个人股票或指标,重点预测未来市场价格的水平(价值)或市场价格运动的方向。本文介绍了三级股票市场预测系统。在第一阶段,应用多元回归分析来定义与输出具有强烈关系的经济和金融变量。在第二阶段,实现了基于差分演化的类型-2模糊群集以创建预测模型。对于第三阶段,模糊类型-2神经网络用于执行未来股票价格预测的推理。网络仿真结果表明,建议的模型优于传统模型,以预测股票市场价格。 2011年由Elsevier B.V发布。

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