Density Deconvolution with Small Berkson Errors
- 作者: Rimal R.1, Pensky M.1
-
隶属关系:
- Dept. Math.
- 期: 卷 28, 编号 3 (2019)
- 页面: 208-227
- 栏目: Article
- URL: https://journals.rcsi.science/1066-5307/article/view/225922
- DOI: https://doi.org/10.3103/S1066530719030025
- ID: 225922
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详细
The present paper studies density deconvolution in the presence of small Berkson errors, in particular, when the variances of the errors tend to zero as the sample size grows. It is known that when the Berkson errors are present, in some cases, the unknown density estimator can be obtained by simple averaging without using kernels. However, this may not be the case when Berkson errors are asymptotically small. By treating the former case as a kernel estimator with the zero bandwidth, we obtain the optimal expressions for the bandwidth. We show that the density of Berkson errors acts as a regularizer, so that the kernel estimator is unnecessary when the variance of Berkson errors lies above some threshold that depends on the shapes of the densities in the model and the number of observations.
作者简介
R. Rimal
Dept. Math.
编辑信件的主要联系方式.
Email: ramchandra@knights.ucf.edu
美国, Orlando, FL
M. Pensky
Dept. Math.
编辑信件的主要联系方式.
Email: Marianna.Pensky@ucf.edu
美国, Orlando, FL
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