位置参数的稳健累积分布函数滤波

Robust CDF‐Filtering of a Location Parameter

Journal of Time Series Analysis · 2025
被引 0
ABS 3

中文导读

提出一种基于残差累积分布函数变换的稳健滤波框架,通过优化分位数检验函数实现,适用于对称观测密度的信号加噪声模型,并应用于脑扫描数据分析。

Abstract

ABSTRACT This paper introduces a novel framework for designing robust filters associated with signal plus noise models having symmetric observation density. The filters are obtained by a recursion where the innovation term is a transform of the cumulative distribution function of the residuals. The latter downweights extreme values by construction and allows the filters to be analytically tractable. The updating scheme naturally arises as the solution of an optimization problem, where the objective function is a continuous version of the quantile check function, formerly employed as a proper scoring function for quantiles and used to construct robust minimum contrast estimators. Stationarity, ergodicity and invertibility are derived under minimal assumptions and preserved under different parametric specifications. Estimation is carried out by the method of maximum likelihood and the asymptotic theory is developed under misspecification. As an illustration, the new filters are applied to brain scan data and compared across Gaussian, Student‐t, Cauchy and Logistic density specifications, with alternative methods. Additional results include a novel class of score‐driven models and a subgaussian density suitable for robust filtering and modelling, arising as the infinite sum of independent non‐identically distributed uniform random variables.

时间序列滤波稳健估计信号处理统计模型