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Estimating the parameters of a BINMA Poisson model for a non-stationary bivariate time series

机译:估计非平稳双变量时间序列的BINMA泊松模型的参数

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摘要

This article proposes a novel non-stationary BINMA time series model by extending two INMA processes where their innovation series follow the bivariate Poisson under time-varying moment assumptions. This article also demonstrates, through simulation studies, the use and superiority of the generalized quasi-likelihood (GQL) approach to estimate the regression effects, which is computationally less complicated as compared to conditional maximum likelihood estimation (CMLE) and the feasible generalized least squares (FGLS). The serial and bivariate dependence correlations are estimated by a robust method of moments.
机译:本文通过扩展两个INMA过程,提出了一种新颖的非平稳BINMA时间序列模型,其中在时变矩假设下,他们的创新序列遵循双变量Poisson。本文还通过仿真研究证明了广义拟似然(GQL)方法用于估计回归效果的用途和优越性,与条件最大似然估计(CMLE)和可行的广义最小二乘法相比,该方法在计算上更简单(FGLS)。序列和双变量相关性相关性是通过一种可靠的矩估计方法来估计的。

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