测量约束下基于最优样本的非加权估计

Pub Date : 2022-12-23 DOI:10.1002/cjs.11753
Jing Wang, HaiYing Wang, Shifeng Xiong
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引用次数: 0

摘要

在处理海量数据时,子抽样是一种选择信息量更大的数据点的实用方法。然而,当响应的测量成本很高时,开发有效的子采样方案是一项挑战,并开发了一种测量约束下的最优采样方法来应对这一挑战。该方法利用最优抽样概率的逆对目标函数进行重新加权,对更重要的数据点分配更小的权重。从而提高了所得到的估计器的估计效率。本文提出了一种基于最优子样本的无加权估计方法,以获得更有效的估计量。在不依赖导频估计的情况下,利用鞅方法得到了估计量的无条件渐近分布,这在现有的子抽样文献中研究较少。渐近结果和数值结果都表明,非加权估计器在参数估计中是更有效的。
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Unweighted estimation based on optimal sample under measurement constraints

To tackle massive data, subsampling is a practical approach to select the more informative data points. However, when responses are expensive to measure, developing efficient subsampling schemes is challenging, and an optimal sampling approach under measurement constraints was developed to meet this challenge. This method uses the inverses of optimal sampling probabilities to reweight the objective function, which assigns smaller weights to the more important data points. Thus, the estimation efficiency of the resulting estimator can be improved. In this paper, we propose an unweighted estimating procedure based on optimal subsamples to obtain a more efficient estimator. We obtain the unconditional asymptotic distribution of the estimator via martingale techniques without conditioning on the pilot estimate, which has been less investigated in the existing subsampling literature. Both asymptotic results and numerical results show that the unweighted estimator is more efficient in parameter estimation.

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