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Semiparametric estimation of outbreak regression

机译:爆发回归的半参数估计

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A regression may be constant for small values of the independent variable (for example time), but then a monotonic increase starts. Such an ‘outbreak’ regression is of interest for example in the study of the outbreak of an epidemic disease. We give the least square estimators for this outbreak regression without assumption of a parametric regression function. It is shown that the least squares estimators are also the maximum likelihood estimators for distributions in the regular exponential family such as the Gaussian or Poisson distribution. The approach is thus semiparametric. The method is applied to Swedish data on influenza, and the properties are demonstrated by a simulation study. The consistency of the estimator is proved.
机译:对于自变量的较小值(例如时间),回归可能是恒定的,但随后开始单调增加。例如,在流行病暴发的研究中,这种“暴发”消退是令人感兴趣的。对于这种爆发回归,我们给出最小二乘估计量,而不假设参数回归函数。结果表明,最小二乘估计量也是正指数族中分布(例如高斯或泊松分布)的最大似然估计量。因此,该方法是半参数的。该方法已应用于瑞典的流感数据,并通过模拟研究证明了其特性。证明了估计量的一致性。

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