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A hybrid ANFIS model based on empirical mode decomposition for stock time series forecasting

机译:基于经验模式分解的混合ANFIS模型用于股票时间序列预测

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摘要

Time series forecasting is an important and widely popular topic in the research of system modeling, and stock index forecasting is an important issue in time series forecasting. Accurate stock price forecasting is a challenging task in predicting financial time series. Time series methods have been applied successfully to forecasting models in many domains, including the stock market. Unfortunately, there are 3 major drawbacks of using time series methods for the stock market: (1) some models can not be applied to datasets that do not follow statistical assumptions; (2) most time series models that use stock data with a significant amount of noise involutedly (caused by changes in market conditions and environments) have worse forecasting performance; and (3) the rules that are mined from artificial neural networks (ANNs) are not easily understandable.
机译:时间序列预测是系统建模研究中的一个重要且广受欢迎的主题,而股指预测则是时间序列预测中的一个重要问题。准确的股价预测是预测财务时间序列的一项艰巨任务。时间序列方法已成功应用于许多领域的预测模型,包括股票市场。不幸的是,在股票市场上使用时间序列方法存在3个主要缺点:(1)有些模型不能应用于不遵循统计假设的数据集; (2)大多数时间序列模型使用的存量数据具有被遗忘的大量噪声(由于市场条件和环境的变化所致),其预测性能较差; (3)从人工神经网络(ANN)提取的规则不容易理解。

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