added support for categorical variables and data frames#38
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Merge branch 'master' of https://github.com/AMBarbosa/embarcadero # Conflicts: # R/zzz.R
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varimp,variable.step,bart.step#31), as I get A LOT of requests for this from my students and collaborators;predictwork also on data frames (see predict to data frame rather than raster stack #13, which wasn't completely solved by your suggestion, and is also a common request that I get);plot.mcmc(plot.mcmc does not work with masked raster layers #26), and added 'col' argument so user can choose the palette for the maps;ggplotanddplyrarguments, to avoid user-puzzling warnings.I believe I've now fixed all merge-impeding conflicts. Please let me know if you need any additional info. All my code edits have comments that explain what they do. Feel free to ask any questions! And thanks for the great package @cjcarlson