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Non parametric estimation of the conditional density function with right-censored and dependent data

机译:具有右禁用和依赖数据的条件密度函数的非参数估计

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In this paper, we study the local constant and the local linear estimators of the conditional density function with right-censored data which exhibit some type of dependence. It is assumed that the observations form a stationary mixing sequence. The asymptotic normality of the two estimators is established, which combined with the condition that implies the consistency of the two estimators and can be employed to construct confidence intervals for the conditional density function. The result on the local linear estimator of the conditional density function in Kim et al. (2010) is relaxed from the i.i.d. assumption to the mixing setting, and the result on the local linear estimator of the conditional density function in Spierdijk (2008) is relaxed from the rho-mixing assumption to the mixing setting. Finite sample behavior of the estimators is investigated by simulations.
机译:在本文中,我们研究了条件密度函数的局部常数和局部线性估计,具有右缩短的数据,呈现某种类型的依赖性。 假设观察结果形成固定混合序列。 建立了两种估计器的渐近常态,其结合意味着两种估计器的一致性,并且可以用于构建条件密度函数的置信区间。 KIM等人的条件密度函数局部线性估计的结果。 (2010)从I.I.D中放松。 对混合设定的假设,以及Spierdijk(2008)中的条件密度函数的局部线性估计器上的结果从rho混合假设到混合设置。 通过模拟研究了估计器的有限样本行为。

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