Adaptive efficient estimation for generalized semi-Markov big data models

Pub Date : 2022-03-05 DOI:10.1007/s10463-022-00820-y
Vlad Stefan Barbu, Slim Beltaief, Serguei Pergamenchtchikov
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引用次数: 1

Abstract

In this paper we study generalized semi-Markov high dimension regression models in continuous time, observed at fixed discrete time moments. The generalized semi-Markov process has dependent jumps and, therefore, it is an extension of the semi-Markov regression introduced in Barbu et al. (Stat Inference Stoch Process 22:187–231, 2019a). For such models we consider estimation problems in nonparametric setting. To this end, we develop model selection procedures for which sharp non-asymptotic oracle inequalities for the robust risks are obtained. Moreover, we give constructive sufficient conditions which provide through the obtained oracle inequalities the adaptive robust efficiency property in the minimax sense. It should be noted also that, for these results, we do not use neither sparse conditions nor the parameter dimension in the model. As examples, regression models constructed through spherical symmetric noise impulses and truncated fractional Poisson processes are considered. Numerical Monte-Carlo simulations confirming the theoretical results are given in the supplementary materials.

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广义半马尔可夫大数据模型的自适应有效估计
本文研究了在固定离散时刻观测的连续时间广义半马尔可夫高维回归模型。广义半马尔可夫过程具有相关跳跃,因此,它是Barbu等人引入的半马尔可夫回归的扩展(Stat Inference Stoch process 22:7 7 - 231,2019a)。对于这类模型,我们考虑了非参数设置下的估计问题。为此,我们开发了模型选择程序,得到了鲁棒风险的尖锐非渐近oracle不等式。此外,我们给出了构造性充分条件,通过所得到的oracle不等式提供了极大极小意义上的自适应鲁棒有效性。还应该注意的是,对于这些结果,我们既没有使用稀疏条件,也没有使用模型中的参数维度。作为例子,考虑了由球面对称噪声脉冲和截断分数泊松过程构造的回归模型。在补充资料中给出了蒙特卡罗数值模拟,证实了理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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