DTWUMI:Imputation of Multivariate Time Series Based on Dynamic Time
Warping
Functions to impute large gaps within multivariate time series based on Dynamic Time Warping methods. Gaps of size 1 or
inferior to a defined threshold are filled using simple average
and weighted moving average respectively. Larger gaps are
filled using the methodology provided by Phan et al. (2017)
<DOI:10.1109/MLSP.2017.8168165>: a query is built immediately
before/after a gap and a moving window is used to find the most
similar sequence to this query using Dynamic Time Warping. To
lower the calculation time, similar sequences are pre-selected
using global features. Contrary to the univariate method
(package 'DTWBI'), these global features are not estimated over
the sequence containing the gap(s), but a feature matrix is
built to summarize general features of the whole multivariate
signal. Once the most similar sequence to the query has been
identified, the adjacent sequence to this window is used to
fill the gap considered. This function can deal with multiple
gaps over all the sequences componing the input multivariate
signal. However, for better consistency, large gaps at the same
location over all sequences should be avoided.