Strong consistency of a deconvolution estimator of cumulative distribution function

Keywords: Cumulative distribution function; Deconvolution problem; Ordinary smooth error; Supersmooth error; Strong consistency.

Abstract

We study the strong consistency of a deconvolution estimator of cumulative distribution function when the distribution of error variable is assumed to be known exactly and ordinary smooth as well as supersmooth.

References

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Published
2023-08-05
How to Cite
Bui Thuy, T., & Phuong, C. X. (2023). Strong consistency of a deconvolution estimator of cumulative distribution function. Statistics, Optimization & Information Computing, 11(4), 922-935. https://doi.org/10.19139/soic-2310-5070-1732
Section
Research Articles