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THE MODEL OF ANALOG COMPLEXING ALGORITHM BASED ON EMPIRICAL MODE DECOMPOSITION METHOD

机译:基于经验模态分解方法的模拟复杂算法模型

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Analog Complexing (AC) algorithm can be considered a sequential pattern recognition method for prediction. However, financial Time-series data are often nonlinear and non-stationary, which cause some difficulties when used AC algorithm in prediction. Aiming at this problem, in this paper, using Empirical Mode Decomposition (EMD) to handle original data, and we will obtain a series of stationary Intrinsic Mode Functions (IMF); then each IMF is predicted dynamically by AC. By the empirical studies on NYMEX Crude Oil Futures price show that AC algorithm based on EMD method have high precision in 1 step and 3 steps dynamically prediction. Key words: Analog Complexing algorithm, Empirical Mode Decomposition, Intrinsic Mode Function, Dynamically prediction
机译:可以将模拟复杂(AC)算法视为用于预测的顺序模式识别方法。但是,金融时间序列数据通常是非线性且不稳定的,这在使用AC算法进行预测时会造成一些困难。针对这一问题,本文采用经验模态分解(EMD)处理原始数据,得到一系列固定的固有模态函数(IMF)。然后由AC动态预测每个IMF。通过对NYMEX原油期货价格的实证研究,表明基于EMD方法的AC算法具有1步和3步动态预测的高精度。关键词:模拟复杂算法经验模式分解本征函数动态预测

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