Time series modeling has attracted extensive research efforts; however, achieving both reliable efficiency and interpretability from a unified model still remains a challenging problem. Among the literature, shapelets offer interpretable and explanatory insights in the classification tasks, while most existing works ignore the differing representative power at different time slices, as well as (more importantly) the evolution pattern of shapelets. In this paper, we propose to extract time-aware shapelets by designing a two-level timing factor. Moreover, we define and construct the shapelet evolution graph, which captures how shapelets evolve over time and can be incorporated into the time series embeddings by graph embedding algorithms. To validate whether the representations obtained in this way can be applied effectively in various scenarios, we conduct experiments based on three public time series datasets, and two real-world datasets from different domains. Experimental results clearly show the improvements achieved by our approach compared with 17 state-of-the-art baselines.
翻译:时间序列建模吸引了广泛的研究努力;然而,从统一模型中获得可靠的效率和可解释性仍然是一个棘手的问题。在文献中,形状提供分类任务的解释性和解释性洞见,而大多数现有作品忽略了不同时间段的不同代表性,以及(更重要的是)形状的演变模式。在本文中,我们提议通过设计一个两级计时系数来提取有时间觉悟的形状。此外,我们定义和构建形状图,它记录形状粒子如何随着时间流逝而变化,并且可以通过图形嵌入算法纳入时间序列。为了验证以这种方式取得的表述是否能够有效地应用于各种情景,我们根据三个公共时间序列数据集和两个来自不同领域的真实世界数据集进行实验。实验结果清楚地表明了我们的方法与17个最先进的基线相比所取得的改进。