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Likelihood Estimation for the INAR(p) Model by Saddlepoint Approximation

机译:基于鞍点近似的INAR(p)模型的似然估计

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摘要

Saddlepoint techniques have been used successfully in many applications, owing to the high accuracy with which they can approximate intractable densities and tail probabilities. This article concerns their use for the estimation of high-order integer-valued autoregressive, INAR(p), processes. Conditional least squares estimation and maximum likelihood estimation have been proposed for INAR(p) models, but the first is inefficient for estimating parametric models, and the second becomes difficult to implement as the order p increases. We propose a simple saddlepoint approximation to the log-likelihood that performs well even in the tails of the distribution and with complicated INAR models. We consider Poisson and negative binomial innovations, and show empirically that the estimator that maximises the saddlepoint approximation behaves very similarly to the maximum likelihood estimator in realistic settings. The approach is applied to data on meningococcal disease counts. Supplementary materials for this article are available online.
机译:鞍点技术由于其可以逼近难处理的密度和尾部概率的高精度而已成功用于许多应用中。本文涉及它们用于估计高阶整数值自回归INAR(p)过程的用途。已经针对INAR(p)模型提出了条件最小二乘估计和最大似然估计,但是第一个方法对于估计参数模型效率低下,第二个方法随着阶数p的增加而变得难以实现。我们提出了对数似然的简单鞍点近似值,即使在分布的尾部和复杂的INAR模型中也能表现良好。我们考虑了泊松和负二项式创新,并凭经验表明,最大化鞍点近似值的估计器在实际设置中的行为与最大似然估计器非常相似。该方法适用于脑膜炎球菌疾病计数数据。可在线获得本文的补充材料。

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