作者
Jessica Lin, Eamonn Keogh, Li Wei, Stefano Lonardi
发表日期
2007/10
期刊
Data Mining and knowledge discovery
卷号
15
页码范围
107-144
出版商
Springer US
简介
Many high level representations of time series have been proposed for data mining, including Fourier transforms, wavelets, eigenwaves, piecewise polynomial models, etc. Many researchers have also considered symbolic representations of time series, noting that such representations would potentiality allow researchers to avail of the wealth of data structures and algorithms from the text processing and bioinformatics communities. While many symbolic representations of time series have been introduced over the past decades, they all suffer from two fatal flaws. First, the dimensionality of the symbolic representation is the same as the original data, and virtually all data mining algorithms scale poorly with dimensionality. Second, although distance measures can be defined on the symbolic approaches, these distance measures have little correlation with distance measures defined on the original time series …
引用总数
2007200820092010201120122013201420152016201720182019202020212022202320248193250588585114130154155180177192201201172102
学术搜索中的文章
J Lin, E Keogh, L Wei, S Lonardi - Data Mining and knowledge discovery, 2007