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Pages 831-848
Received 18 May 2016
Accepted 23 Jun 2017
Published online: 12 Sep 2017
 
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ABSTRACT

Grouped data are commonly encountered in applications. All data from a continuous population are grouped due to rounding of the individual observations. The Bernstein polynomial model is proposed as an approximate model in this paper for estimating a univariate density function based on grouped data. The coefficients of the Bernstein polynomial, as the mixture proportions of beta distributions, can be estimated using an EM algorithm. The optimal degree of the Bernstein polynomial can be determined using a change-point estimation method. The rate of convergence of the proposed density estimate to the true density is proved to be almost parametric by an acceptance–rejection argument used for generating random numbers. The proposed method is compared with some existing methods in a simulation study and is applied to the Chicken Embryo Data.

Acknowledgements

The author would like to thank the associate editor and anonymous referees for their insightful, constructive and useful comments which have really improved upon presentation of this work.

Disclosure statement

No potential conflict of interest was reported by the author.

Additional information

Funding

This research was partly supported by National Natural Science Foundation of China (NSFC) grant 91646106.

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