Practical bandwidth selection in deconvolution kernel density estimation

@article{Delaigle2004PracticalBS,
  title={Practical bandwidth selection in deconvolution kernel density estimation},
  author={Aurore Delaigle and Ir{\`e}ne Gijbels},
  journal={Comput. Stat. Data Anal.},
  year={2004},
  volume={45},
  pages={249-267}
}

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