timeseries) and another time series
of categorical values (groups) the makewpstDO produces
a model that permits discrimination of the groups series using
a discriminant analysis based on a restricted set of non-decimated
wavelet packet coefficients of timeseries. The current function
enables new timeseries data, to be used in conjunction with
the model to generate new, predicted, values of the groups time series.wpstCLASS(newTS, wpstDO)makewpstDO functionpredict.lda function. The
predicted values are stored in the class component of that list.newTS data that was used to analyse the original timeseries
and the details of this transform are stored within the wpstDO
object. Then, using information that was recorded in wpstDO
the packets with the same level/index are extracted from the new NDWPT 
and formed into a matrix. Then the linear discriminant variables,
again stored in wpstDO are used to form predictors of the
original groups time series, ie new values of groups
that correspond to the new values of timeseries.makewpstDO#
# See example at the end of help page for makewpstDO
#Run the code above in your browser using DataLab