10.6084/m9.figshare.7532966.v1 Xiaomeng Niu Xiaomeng Niu Hyunkeun Ryan Cho Hyunkeun Ryan Cho Efficient regression modeling for correlated and overdispersed count data Taylor & Francis Group 2018 Estimation efficiency negative binomial regression overdispersion detection Poisson regression quadratic inference functions within-subject correlation 2018-12-31 07:56:31 Journal contribution https://tandf.figshare.com/articles/journal_contribution/Efficient_regression_modeling_for_correlated_and_overdispersed_count_data/7532966 <p>The objective of this paper is to propose an efficient estimation procedure in a marginal mean regression model for longitudinal count data and to develop a hypothesis test for detecting the presence of overdispersion. We extend the matrix expansion idea of quadratic inference functions to the negative binomial regression framework that entails accommodating both the within-subject correlation and overdispersion issue. Theoretical and numerical results show that the proposed procedure yields a more efficient estimator asymptotically than the one ignoring either the within-subject correlation or overdispersion. When the overdispersion is absent in data, the proposed method might hinder the estimation efficiency in practice, yet the Poisson regression based regression model is fitted to the data sufficiently well. Therefore, we construct the hypothesis test that recommends an appropriate model for the analysis of the correlated count data. Extensive simulation studies indicate that the proposed test can identify the effective model consistently. The proposed procedure is also applied to a transportation safety study and recommends the proposed negative binomial regression model.</p>