Single Parameter Inference of Non-sparse Logistic Regression Models

11/09/2022
by   Yanmei Shi, et al.
0

This paper infers a single parameter in non-sparse logistic regression models. By transforming the null hypothesis into a moment condition, we construct the test statistic and obtain the asymptotic null distribution. Numerical experiments show that our method performs well.

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