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Linear Fuzzy Information Granulation Based Classification Method for Unequal Length Time Series

机译:基于线性模糊信息粒度的不等长时间序列分类方法

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For the classification of unequal length time series, the Dynamic Time Warping distance based k-Nearest Neighbors algorithm is one of the effective classification methods. However, this method has high time cost. Some existing methods decreased the time cost by transforming time series to granular time series, but the fuzzy information granules used there do not reflect the trend information of the given time series. The lack of trend information will lead to inaccurate classification results. In order to reflect the trend information, we adopt linear fuzzy information granules. Based on this, a new distance between granular time series, is defined for the corresponding time series, which can overcome the shortcomings of the Dynamic Time Warping algorithm. The proposed classification method built up on the newly defined distance exhibits better performance and higher efficiency in the experiments presented in this paper.
机译:对于不等长时间序列的分类,基于动态时间规整距离的k最近邻算法是有效的分类方法之一。但是,这种方法具有很高的时间成本。一些现有的方法通过将时间序列转换为粒状时间序列降低了时间成本,但是那里使用的模糊信息颗粒不能反映给定时间序列的趋势信息。缺乏趋势信息将导致分类结果不准确。为了反映趋势信息,我们采用线性模糊信息颗粒。在此基础上,为相应的时间序列定义了一个颗粒时间序列之间的新距离,可以克服动态时间规整算法的缺点。在新提出的距离上建立的分类方法在本文提出的实验中表现出更好的性能和更高的效率。

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