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About
A general test for conditional independence in supervised learning algorithms as proposed by Watson & Wright (2021) doi:10.1007/s10994-021-06030-6. Implements a conditional variable importance measure which can be applied to any supervised learning algorithm and loss function. Provides statistical inference procedures without parametric assumptions and applies equally well to continuous and categorical predictors and outcomes.
Citation | cpi citation info |
github.com/bips-hb/cpi | |
bips-hb.github.io/cpi/ | |
Bug report | File report |
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