On estimation of covariance function for functional data with detection limits

IF 0.8 4区 数学 Q3 STATISTICS & PROBABILITY
Haiyan Liu, Jeanine Houwing-Duistermaat
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引用次数: 0

Abstract

In many studies on disease progression, biomarkers are restricted by detection limits, hence informatively missing. Current approaches ignore the problem by just filling in the value of the detection limit for the missing observations for the estimation of the mean and covariance function, which yield inaccurate estimation. Inspired by our recent work [Liu and Houwing-Duistermaat (2022), ‘Fast Estimators for the Mean Function for Functional Data with Detection Limits’, Stat, e467.] in which novel estimators for mean function for data subject to detection limit are proposed, in this paper, we will propose a novel estimator for the covariance function for sparse and dense data subject to a detection limit. We will derive the asymptotic properties of the estimator. We will compare our method to the standard method, which ignores the detection limit, via simulations. We will illustrate the new approach by analysing biomarker data subject to a detection limit. In contrast to the standard method, our method appeared to provide more accurate estimates of the covariance. Moreover its computation time is small.
带检出限的函数数据的协方差函数估计
在许多疾病进展的研究中,生物标志物受到检测限的限制,因此信息缺失。目前的方法忽略了这个问题,只是在估计均值和协方差函数时,为缺失的观测值填写检测限的值,从而产生不准确的估计。受我们最近工作的启发[Liu和Houwing-Duistermaat(2022),“具有检测限的功能数据的平均函数的快速估计器”,Stat, e467。],其中提出了受检测极限约束的数据的均值函数的新估计,在本文中,我们将提出一个受检测极限约束的稀疏和密集数据的协方差函数的新估计。我们将推导估计量的渐近性质。我们将通过模拟将我们的方法与忽略检测极限的标准方法进行比较。我们将通过分析受检测限制的生物标志物数据来说明新方法。与标准方法相比,我们的方法似乎提供了更准确的协方差估计。而且计算时间小。
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来源期刊
Journal of Nonparametric Statistics
Journal of Nonparametric Statistics 数学-统计学与概率论
CiteScore
1.50
自引率
8.30%
发文量
42
审稿时长
6-12 weeks
期刊介绍: Journal of Nonparametric Statistics provides a medium for the publication of research and survey work in nonparametric statistics and related areas. The scope includes, but is not limited to the following topics: Nonparametric modeling, Nonparametric function estimation, Rank and other robust and distribution-free procedures, Resampling methods, Lack-of-fit testing, Multivariate analysis, Inference with high-dimensional data, Dimension reduction and variable selection, Methods for errors in variables, missing, censored, and other incomplete data structures, Inference of stochastic processes, Sample surveys, Time series analysis, Longitudinal and functional data analysis, Nonparametric Bayes methods and decision procedures, Semiparametric models and procedures, Statistical methods for imaging and tomography, Statistical inverse problems, Financial statistics and econometrics, Bioinformatics and comparative genomics, Statistical algorithms and machine learning. Both the theory and applications of nonparametric statistics are covered in the journal. Research applying nonparametric methods to medicine, engineering, technology, science and humanities is welcomed, provided the novelty and quality level are of the highest order. Authors are encouraged to submit supplementary technical arguments, computer code, data analysed in the paper or any additional information for online publication along with the published paper.
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