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Enhanced symbolic aggregate approximation method for financial time series data representation

机译:用于金融时间序列数据表示的增强型符号聚合近似方法

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Data representation is one of the most important tasks in time series data pre-processing. Time series data representation is required to make the data more suitable for data mining specifically for prediction. Time series data is characterized by its numerical and continuous values. One of the data representation methods for time series is the Symbolic Aggregate Approximation (SAX) which uses mean values as the basis of representation of the data. However. representing the time series financial data with the mean value often causes the loss of patterns that can describes important pieces of information. The aim of this study is to propose an enhancement of SAX representation purposely for the financial time series data. The Enhanced SAX (EN-SAX) adds two new values to the original mean value for each segment in SAX. These values enable better representation for each segment in a lower dimension and keep some of the important patterns that are meaningful in financial time series data. The experimental results show that the EN-SAX representation manages to give lower error rates compared to SAX and improves the prediction accuracy.
机译:数据表示是时间序列数据预处理中最重要的任务之一。需要时间序列数据表示,以使数据更适合于专门用于预测的数据挖掘。时间序列数据的特征在于其数值和连续值。时间序列的数据表示方法之一是符号聚合近似(SAX),它使用平均值作为数据表示的基础。然而。用平均值表示时间序列财务数据通常会导致丢失可描述重要信息的模式。这项研究的目的是针对金融时间序列数据提出一种增强SAX表示的方法。增强型SAX(EN-SAX)为SAX中每个段的原始平均值添加了两个新值。这些值可以在较低维度上更好地表示每个细分市场,并保留一些在财务时间序列数据中有意义的重要模式。实验结果表明,与SAX相比,EN-SAX表示能够提供较低的错误率,并提高了预测精度。

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