Heterogeneous Overdispersed Count Data Regressions via Double Penalized Estimations

10/07/2021
by   Shaomin Li, et al.
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This paper studies the non-asymptotic merits of the double ℓ_1-regularized for heterogeneous overdispersed count data via negative binomial regressions. Under the restricted eigenvalue conditions, we prove the oracle inequalities for Lasso estimators of two partial regression coefficients for the first time, using concentration inequalities of empirical processes. Furthermore, derived from the oracle inequalities, the consistency and convergence rate for the estimators are the theoretical guarantees for further statistical inference. Finally, both simulations and a real data analysis demonstrate that the new methods are effective.

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