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Estimation of split-points in binary regression

机译:二元回归中分裂点的估计

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摘要

Let Y = m(X) + ∈ be a regression model with a dichotomous output Y and a step function m with exact one jump at a point 6 and two different levels a and b. In the applied sciences the parameter θ is interpreted as a split-point whereas b and 1 - a are known as positive and negative predictive value, respectively. We prove n-consistency and a weak convergence type result for a two-step plug-in maximum likelihood estimator of θ. The limit variable is not normal, but a maximizing point of a compound Poisson process on the real line. Estimation of (a, b) yields the usual n~(1/2)-consistency with normal limit. Both results can be extended to a multivariate weak limit theorem. It allows for the construction of asymptotic confidence intervals for (θ, a, b). The theory is applied to real life data of a large epidemiological study.
机译:令Y = m(X)+∈是一个回归模型,其中输出Y为二分,阶跃函数为m,在第6点有一个准确的跳跃,而两个水平分别为a和b。在应用科学中,参数θ被解释为分裂点,而b和1-a分别被称为正和负预测值。我们证明了θ的两步插入式最大似然估计的n一致性和弱收敛类型结果。极限变量不是正常的,而是实线上复合泊松过程的最大点。估计(a,b)会产生通常的n〜(1/2)-一致性与正态极限。两种结果都可以推广到多元弱极限定理。它允许构造(θ,a,b)的渐近置信区间。该理论适用于大型流行病学研究的现实生活数据。

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