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Donsker type theorems for nonparametric maximum likelihood estimators
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  • Published: 10 January 2008

Donsker type theorems for nonparametric maximum likelihood estimators

  • Richard Nickl1,2 

Probability Theory and Related Fields volume 141, pages 331–332 (2008)Cite this article

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The Original Article was published on 24 October 2006

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References

  1. Nickl R.: Beiträge zur Theorie Empirischer Prozesse und der Maximum-Likelihood Schätzung in Funktionenräumen. Univ. Diss., Universität Wien (2005)

  2. Nickl R. (2007). Donsker-type theorems for nonparametric maximum likelihood estimators. Probab. Theory Relat. Fields 138: 411–449

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Authors and Affiliations

  1. University of Vienna, Vienna, Austria

    Richard Nickl

  2. Department of Mathematics, University of Connecticut, 196, Auditorium Road, Storrs, CT, 06269-3009, USA

    Richard Nickl

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  1. Richard Nickl
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Correspondence to Richard Nickl.

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The online version of the original article can be found under doi:10.1007/s00440-006-0031-4.

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Nickl, R. Donsker type theorems for nonparametric maximum likelihood estimators. Probab. Theory Relat. Fields 141, 331–332 (2008). https://doi.org/10.1007/s00440-007-0136-4

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  • Received: 28 November 2007

  • Published: 10 January 2008

  • Issue Date: May 2008

  • DOI: https://doi.org/10.1007/s00440-007-0136-4

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