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A Novel Time Series Forecasting Approach with Multi-Level Data Decomposing and Modeling

机译:一种新型时间序列预测方法,具有多级数据分解和建模

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Time series produced in complex systems are always controlled by multi-level laws, including macroscopic and microscopic laws. These multi-level laws bring on the combination of long-memory effects and short-term irregular fluctuations in the same series. Traditional analysis and forecasting methods do not distinguish these multi-level influences and always make a single model for prediction, which has to introduce a lot of parameters to describe the characteristics of complex systems and results in the loss of efficiency or accuracy. This paper goes deep into the structure of series data, decomposes time series into several simpler ones with different smoothness, and then samples them with multi-scale sizes. After that, each time series is modeled and predicated respectively, and their results are integrated finally. The experimental results on the stock forecasting show that the method is effective and satisfying, even for the time series with large fluctuations.
机译:复杂系统中产生的时间序列始终由多级别的法律控制,包括宏观和微观法。这些多级别法律带来了同一系列中的长记忆效应和短期不规则波动的组合。传统的分析和预测方法不区分这些多层次影响,并始终为预测进行单一模型,这必须引入大量参数来描述复杂系统的特性并导致效率或准确性损失。本文深入进入串联数据的结构,将时间序列分解为几个更简单的平滑度,然后用多尺寸尺寸对它们进行采样。之后,每个时间序列分别被建模和预测,它们最终集成了它们的结果。股票预测的实验结果表明,该方法是有效且令人满意的,即使是具有大波动的时间序列。

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