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plot_spectra() no longer returns an error when
detect.outliers is set to FALSE and no
alternative title is provided via the alternate.title
parameter (#29).spectacles package (v0.5.5) that was causing data frame
construction errors in model performance calculations.spectacles resolved (#31).
spectacles is now restored on CRAN.waves is fully compatible with the restored
version.train_spectra()
using vectorized indexing and preallocated result structures.train_spectra() for
faster column selection and reduced memory overhead.train_spectra() and test_spectra().return.distances = TRUE, the h.distance column is
now located between metadata and spectra in the returned
data.frame (#28).train_spectra() and
test_spectra() to reduce cyclomatic complexity (#26).
train_spectra() complexity reduced from 32+ to 25test_spectra() complexity reduced to 11handle_deprecations(), validate_inputs(),
partition_data(), train_individual_model(),
calculate_performance(), and
create_cv_control().predict_spectra() no longer returns error when
running example code (#25).cv.scheme is set to “CV2” and “CV0” and there are
no overlapping genotypes between “trial1” and “trial2”,
format_cv() now returns NULL. Previously,
results would be returned even if no overlap was present, resulting in
incorrect CV scheme specification.format_cv() parameter cv.method is now the
boolean parameter stratified.sampling for consistency with
other waves functions.plot_spectra() no longer requires a column named
“unique.id”.save_model() output now works correctly with
predict_spectra().train_spectra() no longer returns an error
when stratified.sampling = F.train_spectra(), stratified random sampling of
training and test sets now allows the user to provide a seed value for
set.seed(). For random (non-stratified) sampling of
training and test sets, seed is set to the current iteration
number.model.method = "svmLinear and
model.method = "svmRadial no longer return an error when
used in train_spectra() or
test_spectra().test_spectra() now returns trained model
correctly when only one pretreatment is specified.plot_spectra() is now
NULL (no title) if detect.outliers is set to
FALSE.$summary.model.performance from test_spectra()
now include underscores rather than periods for easier parsing.vignette("waves")AggregateSpectra ->
aggregate_spectra()DoPreprocessing ->
pretreat_spectra()FilterSpectra -> filter_spectra()FormatCV-> format_cv()PlotSpectra()-> plot_spectra()SaveModel()-> save_model()TestModelPerformance()->
test_spectra()TrainSpectralModel()->
train_spectra()preprocessing is now pretreatment).tune.length must be set to 5 when
model.algorithm == "rf").plot_spectra() including
color and title customization and the option to forgo filtering
(#5).train_spectra() and test_spectra().save_model() now automatically selects the best model
if provided with multiple pretreatments.wavelengths is no longer a required argument for any of
the waves functions.proportion.train. Previously,
this proportion was fixed at 0.7 (#13).aggregate_spectra() now allows for aggregation
by a single grouping column (#14).save.model in the function
save_model() has been renamed to write.model
for clarity.TrainSpectralModel().TrainSpectralModel() or when
preprocessing = TRUE in TestModelPerformance()
(#7).PlotSpectra() now allows for missing data in
non-spectral columns of the input data frame.Initial package release
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
Health stats visible at Monitor.