Abstract
Sparked by Efron's seminal paper, the decade of the 1980s was a period of active research on bootstrap methods for independent data--mainly i.i.d. or regression set-ups. By contrast, in the 1990s much research was directed towards resampling dependent data, for example, time series and random fields. Consequently, the availability of valid nonparametric inference procedures based on resampling and/or subsampling has freed practitioners from the necessity of resorting to simplifying assumptions such as normality or linearity that may be misleading.
Citation
Dimitris N. Politis. "The Impact of Bootstrap Methods on Time Series Analysis." Statist. Sci. 18 (2) 219 - 230, May 2003. https://doi.org/10.1214/ss/1063994977
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