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Problemy Peredachi Informatsii, 1985, Volume 21, Issue 4, Pages 17–33
(Mi ppi1003)
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Methods of Signal Processing
Convergence Rate of Nonparametric Estimates of Maximum-Likelihood Type
A. S. Nemirovskii, B. T. Polyak, A. B. Tsybakov
Abstract:
The authors obtain the rate of convergence of $M$-estimates of nonparametric regression in the $L_2$ metric. It is shown that, for classes of smooth, monotonic, and convex functions, this rate cannot be improved (to within a constant). It is established that in a number of cases, particularly for the class of mono-tonic functions, nonlinear $M$-estimates are better than any linear estimates in terms of the order of the rate of convergence.
Received: 10.11.1983
Citation:
A. S. Nemirovskii, B. T. Polyak, A. B. Tsybakov, “Convergence Rate of Nonparametric Estimates of Maximum-Likelihood Type”, Probl. Peredachi Inf., 21:4 (1985), 17–33; Problems Inform. Transmission, 21:4 (1985), 258–272
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https://www.mathnet.ru/eng/ppi1003 https://www.mathnet.ru/eng/ppi/v21/i4/p17
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Abstract page: | 694 | Full-text PDF : | 361 |
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