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order() on data.frame
objectsexplain() will now pass ... on to the
relevant predict() method (#150)explain.data.frame() gains a gower_pow
argument to modify the calculated gower distance before use by raising
it to the power of the given value (#158)lime() now warns when quantile binning is not feasible
and uses standard binning instead (#154)lambda value in the local model fit to
match the one used in the Python version according to the relationship
given here: https://stats.stackexchange.com/a/270705parsnip and
rangerpreprocess argument to lime.data.frame
to keep it in line with the other types. Use it to transform your
data.frame into a new input that your model expects after
permutationsmagick is now only in suggest to cut down on heavy hard
dependenciesexplain now returns a tbl_df so you get
pretty printing if you have tibble loadedplot_features now has a cases argument for
subsetting the data before plottingplot_image_explanation (#35)keras
packageas_classifier() and as_regressor() for
ad-hoc specification of the model type in case the heuristic implemented
in lime doesn’t hold. as_classifier() also
lets you add/overwrite the class labels.gower as the new default similarity measure for
tabular databin_continuous = FALSE the default behavior is now
to sample from a kernel density estimation rather than assume a normal
distribution.plot_explanations() (#60)plot_text_explanation() with better
formatting and scrolling support for many explanationsNEWS.md file to track changes to the
package.NA values (#8)plot_features()
(#38)h2o (@mdancho84) (#40)NA values (#45)Date and POSIXt columns. They
will be kept constant during permutations so that lime will
explain the model behaviour at the given timepoint based on the
remaining features (#39).plot_explanations() for an overview plot of a large
explanation setThese 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.