长相关结构下变系数动态模型的鲁棒小波估计

IF 2 2区 数学 Q1 MATHEMATICS Analysis and Applications Pub Date : 2021-03-06 DOI:10.1142/S0219530521500032
Xingcai Zhou, Shaogao Lv
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引用次数: 0

摘要

本文研究了一类基于小波技术的变系数动态模型鲁棒估计问题,该问题既能适应底层函数的局部特征,又对函数的平滑性没有太大的限制。建立了设计变量为平稳短程相关(SRD)和误差为长期相关(LRD)时基于小波的鲁棒估计器的收敛速率和渐近分布。特别是,当一个LRD过程的真分量满足一定的平滑性时,在估计一致性方面的收敛速度[公式:见文本]是可以实现的。此外,给出了所提估计量的渐近性质,表明了所提方法对于具有LRD的变系数模型的置信水平。
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Robust wavelet-based estimation for varying coefficient dynamic models under long-dependent structures
This paper considers a class of robust estimation problems for varying coefficient dynamic models via wavelet techniques, which can adapt to local features of the underlying functions and has less restriction to the smoothness of the functions. The convergence rates and asymptotic distributions of the robust wavelet-based estimator are established when the design variables are stationary short-range dependent (SRD) and the errors are long-range dependent (LRD). Particularly, a rate of convergence [Formula: see text] in terms of estimation consistency can be achievable when the true components satisfy certain smoothness for a LRD process. Furthermore, an asymptotic property of the proposed estimator is given to indicate the confidence level of our proposed method for varying coefficient models with LRD.
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来源期刊
CiteScore
3.90
自引率
4.50%
发文量
29
审稿时长
>12 weeks
期刊介绍: Analysis and Applications publishes high quality mathematical papers that treat those parts of analysis which have direct or potential applications to the physical and biological sciences and engineering. Some of the topics from analysis include approximation theory, asymptotic analysis, calculus of variations, integral equations, integral transforms, ordinary and partial differential equations, delay differential equations, and perturbation methods. The primary aim of the journal is to encourage the development of new techniques and results in applied analysis.
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