Zhang Wei, Wang Zhihai, Yuan Jidong, Hao Shilei
School of Computer and Information Technology, Beijing Jiaotong University, Beijing 100044, China.
Comput Intell Neurosci. 2020 Oct 24;2020:1978310. doi: 10.1155/2020/1978310. eCollection 2020.
As a representation of discriminative features, the time series shapelet has recently received considerable research interest. However, most shapelet-based classification models evaluate the differential ability of the shapelet on the whole training dataset, neglecting characteristic information contained in each instance to be classified and the classwise feature frequency information. Hence, the computational complexity of feature extraction is high, and the interpretability is inadequate. To this end, the efficiency of shapelet discovery is improved through a lazy strategy fusing global and local similarities. In the prediction process, the strategy learns a specific evaluation dataset for each instance, and then the captured characteristics are directly used to progressively reduce the uncertainty of the predicted class label. Moreover, a shapelet coverage score is defined to calculate the discriminability of each time stamp for different classes. The experimental results show that the proposed method is competitive with the benchmark methods and provides insight into the discriminative features of each time series and each type in the data.
作为一种判别特征的表示形式,时间序列形状let最近受到了相当多的研究关注。然而,大多数基于形状let的分类模型在整个训练数据集上评估形状let的区分能力,而忽略了每个待分类实例中包含的特征信息和类内特征频率信息。因此,特征提取的计算复杂度很高,且可解释性不足。为此,通过融合全局和局部相似性的懒惰策略提高了形状let发现的效率。在预测过程中,该策略为每个实例学习一个特定的评估数据集,然后直接使用捕获的特征逐步降低预测类标签的不确定性。此外,定义了一个形状let覆盖分数来计算每个时间戳对不同类别的可区分性。实验结果表明,所提出的方法与基准方法具有竞争力,并为数据中每个时间序列和每种类型的判别特征提供了见解。