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Negative binomial regression in dose-effect relationships
M. S. Tikhov Lobachevsky University of Nizhni Novgorod,
Gagarin av. 23,
603950, Nizhni Novgorod, Russia
Abstract:
This paper is devoted to problem on estimating the distribution function and its quantiles in the dose-effect relationships with nonparametric negative binomial regression.
Most of the mathematical researches on dose-response relationships concerned models with binomial regression, in particular, models with binary data. Here we propose a kernel-based estimates for the distribution function, the kernels of which are weighted by a negative binomial random variable at each covariate. These covariates are quasirandom van der Corput and Halton low-discrepancy sequences. Our estimates are consistent, that is, they converge to their optimal values in probability as the number of observations $n$ grows to infinity. The proposed estimats are compared by their mean-square errors. We show that our estimates have a smaller asymptotic variance in comparison, in particular, with estimates of the Nadaraya-Watson type and other estimates. We present nonparametric estimates for the quantiles obtained by inverting a kernel estimate of the distribution function. We show that the asymptotic normality of these bias-adjusted estimates is preserved under some regularity conditions. We also provide a multidimensional generalization of the obtained results.
Keywords:
negative binomial response model, effective dose level, nonparametric estimate.
Received: 18.11.2021
Citation:
M. S. Tikhov, “Negative binomial regression in dose-effect relationships”, Ufa Math. J., 14:4 (2022), 96–112
Linking options:
https://www.mathnet.ru/eng/ufa641https://doi.org/10.13108/2022-14-4-96 https://www.mathnet.ru/eng/ufa/v14/i4/p100
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Abstract page: | 332 | Russian version PDF: | 335 | English version PDF: | 27 | References: | 258 |
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