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WiSEBoot (version 1.4.0)

Wild Scale-Enhanced Bootstrap

Description

Perform the Wild Scale-Enhanced (WiSE) bootstrap. Specifically, the user may supply a single or multiple equally-spaced time series and use the WiSE bootstrap to select a wavelet-smoothed model. Conversely, a pre-selected smooth level may also be specified for the time series. Quantities such as the bootstrap sample of wavelet coefficients, smoothed bootstrap samples, and specific hypothesis testing and confidence region results of the wavelet coefficients may be obtained. Additional functions are available to the user which help format the time series before analysis. This methodology is recommended to aid in model selection and signal extraction. Note: This package specifically uses wavelet bases in the WiSE bootstrap methodology, but the theoretical construct is much more versatile.

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Version

Install

install.packages('WiSEBoot')

Monthly Downloads

49

Version

1.4.0

License

GPL-2

Maintainer

Megan Heyman

Last Published

April 3rd, 2016

Functions in WiSEBoot (1.4.0)

SimulatedSNR5Series

Simulated Wavelet Series with SNR=5
WiSEHypothesisTest

WiSE Wavelet Coefficients: Linear Hypothesis Test
CM20N20S150W

AIRS, IPSL, and MIROC5 Data at 150W
CM20N20S60E

AIRS, IPSL, and MIROC5 Data at 60E
deSeasonalize

De-seasonalize daily, monthly, or data series with IDs
WiSEBoot-package

Wild Scale-Enhanced (WiSE) Bootstrap
WiSEConfidenceRegion

WiSE Wavelet Coefficients: Linear Confidence Region
smoothTimeSeries

Threshold Wavelet Coefficients to Create Smooth Time Series
SimulatedSNR9Series

Simulated Wavelet Signals with SNR=9
SimulatedSmoothSeries

Simulated Wavelet-Smoothed Series
SimulatedSNR15Series

Simulated Wavelet Signals with SNR=15
padVector

Increase data length to the closest power of 2.
SimulatedSNR25Series

Simulated Wavelet Signals with SNR=25
retrieveBootstrapSample

Construct the bootstrap data series from wavelet coefficients
WiSEBoot

Wild Scale-Enhanced (WiSE) Bootstrap for Model Selection
padMatrix

Increase data length to the closest power of 2.