SiZer for time series: A new approach to the analysis of trends

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Smoothing methods and SiZer are a useful statistical tool for discovering statistically significant structure in data. Based on scale space ideas originally developed in the computer vision literature, SiZer (Significant ZERo crossing of the derivatives) is a graphical device to assess which observed features are 'really there' and which are just spurious sampling artifacts. In this paper, we develop SiZer like ideas in time series analysis to address the important issue of significance of trends. This is not a straight forward extension, since one data set does not contain the information needed to distinguish 'trend' from 'dependence'. A new visualization is proposed, which shows the statistician the range of trade-offs that are available. Simulation and real data results illustrate the effectiveness of the method
Publisher
INST MATHEMATICAL STATISTICS
Issue Date
2007
Language
English
Article Type
Article
Citation

ELECTRONIC JOURNAL OF STATISTICS, v.1, pp.268 - 289

ISSN
1935-7524
DOI
10.1214/07-EJS006
URI
http://hdl.handle.net/10203/285765
Appears in Collection
MA-Journal Papers(저널논문)
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