动态时间归整
系列(地层学)
聚类分析
粒度计算
粒度
计算机科学
数据挖掘
时间序列
维数之咒
度量(数据仓库)
相似性度量
造粒
模式识别(心理学)
人工智能
机器学习
粗集
古生物学
物理
经典力学
生物
操作系统
作者
Hongyue Guo,Lidong Wang,Xiaodong Liu,Witold Pedrycz
标识
DOI:10.1109/tcyb.2021.3054593
摘要
Granular computing has been an intense research area over the past two decades, focusing on acquiring, processing, and interpreting information granules. In this study, we focus on the granulation of time series and discover the overall structure of the original time series by clustering the granular time series. During the granulation process, when time series exhibit some trend (up trend, equal trend, or down trend) or consist of a variety of tendencies, the trend is essential to be involved to construct the granular time series. Following the principle of justifiable granularity, we propose to form a series of trend-based information granules to describe the original time series and effectively reduce its dimensionality. Then, the similarity measure between trend-based information granules is provided, and considering the dynamic feature of time-series data, dynamic time warping (DTW) distance is generalized to measure the distance for granular time series. In sum, we show here a novel way of forming trend-based granular time series and the corresponding similarity measure, then based on this, the hierarchical clustering of granular time series is realized. The proposed approach can capture the main essence of time series and help to reduce the computing overhead. Experimental results show that the designed approach can reveal meaningful trend-based information granules, and provide promising clustering results on UCR and real-world datasets.
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