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Modelling nonlinear count time series with local mixtures of Poisson autoregressions

机译:用泊松自回归局部混合对非线性计数时间序列建模

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摘要

A novel class of nonlinear models is studied based on local mixtures of autoregressive Poisson time series. The proposed model has the following construction: at any given time period, there exist a certain number of Poisson regression models, denoted as experts, where the vector of covariates may include lags of the dependent variable. Additionally, the existence of a latent multinomial variable is assumed, whose distribution depends on the same covariates as the experts. The latent variable determines which Poisson regression is observed. This structure is a special case of the mixtures-of-experts class of models, which is considerably flexible in modelling the conditional mean function. A formal treatment of conditions to guarantee the asymptotic normality of the maximum likelihood estimator is presented, under stationarity and nonstationarity. The performance of common model selection criteria in selecting the number of experts is explored via Monte Carlo simulations. Finally, an application to a real data set is presented, in order to illustrate the ability of the proposed structure to flexibly model the conditional distribution function.
机译:基于自回归泊松时间序列的局部混合,研究了一类新的非线性模型。所提出的模型具有以下构造:在任何给定时间段,都有一定数量的泊松回归模型(称为专家),其中协变量向量可能包括因变量的滞后。另外,假设存在一个潜在的多项式变量,其分布取决于与专家相同的协变量。潜在变量确定观察到哪个泊松回归。这种结构是专家混合模型类别的一种特例,在建模条件均值函数时具有很大的灵活性。在平稳性和非平稳性下,提出了保证最大似然估计的渐近正态性的条件的形式化处理。通过蒙特卡洛模拟探索了通用模型选择标准在选择专家人数方面的性能。最后,提出了一种对实际数据集的应用程序,以说明所提出结构对条件分布函数进行灵活建模的能力。

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