Characteristic-Based Clustering for Time Series Data
作者:Xiaozhe Wang, Kate Smith, Rob Hyndman
摘要
With the growing importance of time series clustering research, particularly for similarity searches amongst long time series such as those arising in medicine or finance, it is critical for us to find a way to resolve the outstanding problems that make most clustering methods impractical under certain circumstances. When the time series is very long, some clustering algorithms may fail because the very notation of similarity is dubious in high dimension space; many methods cannot handle missing data when the clustering is based on a distance metric.
论文关键词:time series clustering, clustering, global characteristics, feature measures, dimensionality reduction
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论文官网地址:https://doi.org/10.1007/s10618-005-0039-x