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The focussed information criterion for generalised linear regression models for time series

机译:时间序列广义线性回归模型的主要信息标准

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The present paper proposes the focussed information criterion (FIC) to tackle the model selection problems pertinent to generalised linear models (GLM) for time series. As a first step towards constructing the FIC, we formally discuss the local asymptotic theory of quasi-maximum likelihood estimation for time series GLM under potential model misspecification. The general FIC formula is derived subsequently that is useful for the simultaneous selection of the order of the autoregressive response as well as a subset of important covariates. We also develop the average FIC (AFIC) that is instrumental in selecting an overall good model for a range of covariates and time regions and establish the equivalence of the AFIC with the classical Akaike's information criterion (AIC). We demonstrate our theory with the analysis of rainfall patterns in Melbourne by means of the logistic and Gamma regression models.
机译:本文提出了聚焦信息标准(FIC)来解决与时间序列的广义线性模型(GLM)相关的模型选择问题。作为构建FIC的第一步,我们正式讨论了在潜在模型拼盘下的时间序列GLM的局部渐近理论。随后导出通用FIC公式,这对于同时选择自回归响应的顺序以及重要协变量的子集。我们还开发了普通的FIC(AFIC),它在为一系列协变量和时区选择整体良好模型,并与古典Akaike的信息标准(AIC)建立了AFIC的等价性。我们通过逻辑和伽马回归模型分析了我们的理论,通过分析墨尔本的降雨模式。

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