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A general framework for constructing variable importance plots from various types of machine learning models in R. Aside from some standard model- specific variable importance measures, this package also provides model- agnostic approaches that can be applied to any supervised learning algorithm. These include an efficient permutation-based variable importance measure as well as novel approaches based on partial dependence plots (PDPs) and individual conditional expectation (ICE) curves which are described in Greenwell et al. (2018) <arXiv:1805.04755>. An experimental method for quantifying the relative strength of interaction effects is also included (see the previous reference for details).

copied from cf-staging / r-vip
Type Size Name Uploaded Downloads Labels
conda 422.8 kB | noarch/r-vip-0.1.3-r36h6115d3f_1.tar.bz2  5 years and 8 months ago 4356 main cf202003
conda 420.8 kB | noarch/r-vip-0.1.3-r35h6115d3f_1.tar.bz2  5 years and 8 months ago 3800 main cf202003
conda 421.6 kB | noarch/r-vip-0.1.3-r35h6115d3f_0.tar.bz2  5 years and 8 months ago 3788 main cf202003
conda 422.5 kB | noarch/r-vip-0.1.3-r36h6115d3f_0.tar.bz2  5 years and 8 months ago 3785 main cf202003

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