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New and fast closed-form efficient estimators for the negative multinomial distribution

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  • Jun Zhao
  • Yun-beom Lee
  • Hyoung-Moon Kim

Abstract

The negative multinomial (NM) distribution is of interest in various application studies. Based on closed-form n-consistent estimators, new and fast closed-form efficient estimators are proposed for the NM distribution. The theorem applied to derive the new estimators guarantees two important properties of the new closed-form efficient estimators: asymptotic efficiency and normality. The new closed-form efficient estimators are denoted as MLE-CEs, because the asymptotic distribution is the same as that of the maximum likelihood estimators (MLEs). Simulation studies suggest that the MLE-CE performs similarly to its MLE. The estimated accuracies of the MLE and MLE-CE are generally better than the method of moments estimator (MME) for relatively large 𝒑 values. The MLE-CE is 10–30 times faster than the MLE, especially for large sample sizes, which is good for the big data era. Considering the estimated accuracy and computing time, the MLE-CE is recommended for large 𝒑 values, whereas the MME is recommended for other conditions.

Suggested Citation

  • Jun Zhao & Yun-beom Lee & Hyoung-Moon Kim, 2025. "New and fast closed-form efficient estimators for the negative multinomial distribution," Communications in Statistics - Theory and Methods, Taylor & Francis Journals, vol. 54(20), pages 6684-6699, October.
  • Handle: RePEc:taf:lstaxx:v:54:y:2025:i:20:p:6684-6699
    DOI: 10.1080/03610926.2025.2461610
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