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首页> 外文期刊>Journal of statistical computation and simulation >Generalized autoregressive and moving average models: multicollinearity, interpretation and a new modified model
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Generalized autoregressive and moving average models: multicollinearity, interpretation and a new modified model

机译:广义自回归和移动平均模型:多型性,解释和新的修改模型

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摘要

In this paper, we call attention of two observed features in practical applications of the Generalized Autoregressive Moving Average (GARMA) model due to the structure of its linear predictor. One is the multicollinearity which may lead to a non-convergence of the maximum likelihood, using iteratively reweighted least squares, and the inflation of the estimator's variance. The second is that the inclusion of the same lagged observations into the autoregressive and moving average components confounds the interpretation of the parameters. A modified model, GAR-M, is presented to reduce the multicollinearity and to improve the interpretation of the parameters. The expectation and variance under stationarity conditions are presented for the identity and logarithm link function. In a general sense, simulation studies show that the maximum likelihood estimators based on the GARMA and GAR-M models are equivalent but the GAR-M estimators presented a little lower standard errors and some restrictions in the parametric space are imposed to guarantee the stationarity of the process. Also, a real data analysis illustrates the GAR-M fit for daily hospitalization rates of elderly people due to respiratory diseases from October 2012 to April 2015 in SAo Paulo city, Brazil.
机译:在本文中,由于其线性预测器的结构,我们在广义自回归移动平均(Garma)模型的实际应用中引起了两个观察到的两个特征。一个是多型性可能导致最大可能性的非收敛性,使用迭代重新重量的最小二乘,以及估计者方差的膨胀。其次是将相同的滞后观测包含到自回归和移动平均部件中困扰着对参数的解释。提出了一种修改的模型,GAR-M,以减少多色性,并改善参数的解释。为身份和对数链路函数提出了适合性条件下的期望和方差。在一般意义上,仿真研究表明,基于GARMA和GAR-M型号的最大似然估计是等同的,但GAR-M估计量呈现了一点较低的标准误差,并且施加了参数空间的一些限制,以保证具有的平稳性这个过程。此外,实际数据分析说明了由于2012年10月至2015年4月在巴西圣保罗市的呼吸系统疾病的日常住院时间的GAR-M。

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