Nonparametric Probability Density Estimation by Discrete Maximum Penalized- Likelihood Criteria

  • Scott D
  • Tapia R
  • Thompson J
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Abstract

A nonparametric probability density estimator is proposed that is optimal -with respect to a discretized form of a continuous penalized-likelihood criterion functional. Approximation results relating the discrete estimator to the estimate obtained by solving the corresponding infinite-dimensional problem are pre- sented. The discrete estimator is shown to be consistent. The numerical im- plementation of this discrete estimator is outlined and examples displayed. A simulation study compares the integrated mean square error of the discrete estimator with that of the well-known kernel estimators. Asymptotic rates of convergence of the discrete estimator are also investigated.

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Scott, D. W., Tapia, R. A., & Thompson, J. R. (2007). Nonparametric Probability Density Estimation by Discrete Maximum Penalized- Likelihood Criteria. The Annals of Statistics, 8(4). https://doi.org/10.1214/aos/1176345074

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