Fast Time Series Classification Based on Infrequent Shapelets

Qing He, Zhi Dong, Fuzhen Zhuang, Tianfeng Shang, Zhongzhi Shi
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引用次数: 49

Abstract

Time series shapelets are small and local time series subsequences which are in some sense maximally representative of a class. E.Keogh uses distance of the shapelet to classify objects. Even though shapelet classification can be interpretable and more accurate than many state-of-the-art classifiers, there is one main limitation of shapelets, i.e. shapelet classification training process is offline, and uses subsequence early abandon and admissible entropy pruning strategies, the time to compute is still significant. In this work, we address the later problem by introducing a novel algorithm that finds time series shapelet in significantly less time than the current methods by extracting infrequent time series shapelet candidates. Subsequences that are distinguishable are usually infrequent compared to other subsequences. The algorithm called ISDT (Infrequent Shapelet Decision Tree) uses infrequent shapelet candidates extracting to find shapelet. Experiments demonstrate the efficiency of ISDT algorithm on several benchmark time series datasets. The result shows that ISDT significantly outperforms the current shapelet algorithm.
基于非频繁Shapelets的快速时间序列分类
时间序列shapelets是小的局部时间序列子序列,在某种意义上最大程度地代表了一个类。keogh利用形状的距离对物体进行分类。尽管shapelet分类比许多最先进的分类器具有可解释性和准确性,但shapelet有一个主要的限制,即shapelet分类训练过程是离线的,并且使用子序列早期放弃和允许熵修剪策略,计算时间仍然很长。在这项工作中,我们通过引入一种新的算法来解决后一个问题,该算法通过提取不频繁的时间序列候选形状,在比当前方法更短的时间内找到时间序列形状。与其他子序列相比,可区分的子序列通常不频繁。该算法称为ISDT (infrequency Shapelet Decision Tree),通过对不频繁Shapelet候选者进行提取来寻找Shapelet。实验证明了ISDT算法在多个基准时间序列数据集上的有效性。结果表明,ISDT算法明显优于现有的shapelet算法。
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