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IQ estimation for accurate time-series classification

机译:智商估计以进行准确的时间序列分类

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Due to its various applications, time-series classification is a prominent research topic in data mining and computational intelligence. The simple k-NN classifier using dynamic time warping (DTW) distance had been shown to be competitive to other state-of-the art time-series classifiers. In our research, however, we observed that a single fixed choice for the number of nearest neighbors k may lead to suboptimal performance. This is due to the complexity of time-series data, especially because the characteristic of the data may vary from region to region. Therefore, local adaptations of the classification algorithm is required. In order to address this problem in a principled way by, in this paper we introduce individual quality (IQ) estimation. This refers to estimating the expected classification accuracy for each time series and each k individually. Based on the IQ estimations we combine the classification results of several k-NN classifiers as final prediction. In our framework of IQ, we develop two time-series classification algorithms, IQ-MAX and IQ-WV. In our experiments on 35 commonly used benchmark data sets, we show that both IQ-MAX and IQ-WV outperform two baselines.
机译:由于其广泛的应用,时间序列分类是数据挖掘和计算智能中的一个重要研究主题。已经证明,使用动态时间规整(DTW)距离的简单k-NN分类器与其他最新的时间序列分类器相比具有竞争力。但是,在我们的研究中,我们发现,对最接近的邻居数k进行单个固定选择可能会导致性能欠佳。这是由于时间序列数据的复杂性,尤其是因为数据的特性可能因区域而异。因此,需要对分类算法进行局部调整。为了从原则上解决此问题,在本文中,我们介绍了个人质量(IQ)估计。这是指估计每个时间序列和每个k的预期分类精度。基于IQ估计,我们将几个k-NN分类器的分类结果组合为最终预测。在我们的IQ框架中,我们开发了两种时间序列分类算法,即IQ-MAX和IQ-WV。在针对35个常用基准数据集的实验中,我们表明IQ-MAX和IQ-WV均优于两个基准。

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