As time series data become more complex and users expect more sophisticated information, numerous algorithms have been proposed to solve these challenges. Among those algorithms to classify time series data,�shapelet�– a discriminative subsequence of time series data – is considered a practical approach due to its accurate and insightful classification. However, previously proposed�shapelet�algorithms still suffer from exceedingly high computational complexity, as a result, limiting its scalability to larger datasets. Therefore, in this work�propose a novel algorithm that speeds up�shapelet�discovery process. The�algorithm so called “Dual�Increment�Shapelets�(DIS)” is a combination of two-layered incremental neural network and filtering process based on subsequence characteristics. Empirical experiments on forty datasets evidently demonstrate that the�proposed work could achieve large speedup while maintaining its accuracy. Unlike the previous algorithm that mainly emphasizes speedup of the search algorithm, DIS essentially reduces the number of�shapelet�candidates based on subsequence characteristics. As a result, The�DIS algorithm could achieve more than three orders of magnitude speedup, comparing with the baseline algorithms, while preserving the accuracy of the state-of-the-art algorithm.��
Nattakit VichitChotirat Ann Ratanamahatana
Guozhong LiByron ChoiJianliang XuSourav S. BhowmickKwok Pan ChunGrace Lai–Hung Wong
Wei ZhangZhihai WangJidong YuanShilei Hao