SLOE: AFasterMethodforStatisticalInferencein High-DimensionalLogisticRegression
–Neural Information Processing Systems
Recently, Sur and Candès [2019] showed that these issues can be corrected by applying a new approximation of the MLE's sampling distribution in this highdimensional regime. Unfortunately, these corrections are difficult to implement in practice, because they require an estimate of thesignal strength, which is a function of the underlying parametersβ of the logistic regression.
Neural Information Processing Systems
Feb-11-2026, 23:20:53 GMT
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