Imputation Methods for Multivariate Locally Stationary Time Series


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Documentation for package ‘mvLSWimpute’ version 0.1.1

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mvLSWimpute-package Imputation Methods for Multivariate Locally Stationary Time Series
correct_per Function to smooth the raw wavelet periodogram
form_lacv_backward Function to form the local autocovariance array for the forecasting / backcasting step.
form_lacv_forward Function to form the local autocovariance array for the forecasting / backcasting step.
haarWT Function to apply the (univariate) Haar wavelet transform
mvLSWimpute Imputation Methods for Multivariate Locally Stationary Time Series
mv_impute Function to apply the mvLSWimpute method and impute missing values in a multivariate locally stationary time series
pdef Function to regularise the LWS matrix.
pred_eq_backward Function to form the prediction equations for the forecasting / backcasting step.
pred_eq_forward Function to form the prediction equations for the forecasting / backcasting step.
smooth_per Function to smooth the raw wavelet periodogram using the default 'mvLSW' routine.
spec_estimation Function to estimate the Local Wavelet Spectral matrix for a multivariate locally stationary time series containing missing values