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FANOK: Knockoffs in Linear Time

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arxiv 2006.08790 v1 pith:O6MUD4CB submitted 2020-06-15 cs.LG stat.MEstat.ML

FANOK: Knockoffs in Linear Time

classification cs.LG stat.MEstat.ML
keywords complexitylargecovariancederivedimensionefficientfactorknockoff
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We describe a series of algorithms that efficiently implement Gaussian model-X knockoffs to control the false discovery rate on large scale feature selection problems. Identifying the knockoff distribution requires solving a large scale semidefinite program for which we derive several efficient methods. One handles generic covariance matrices, has a complexity scaling as $O(p^3)$ where $p$ is the ambient dimension, while another assumes a rank $k$ factor model on the covariance matrix to reduce this complexity bound to $O(pk^2)$. We also derive efficient procedures to both estimate factor models and sample knockoff covariates with complexity linear in the dimension. We test our methods on problems with $p$ as large as $500,000$.

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