Extreme Limit Theory of Competing Risks under Power Normalization

05/04/2023
by   Kaihao Hu, et al.
0

Advanced science and technology provide a wealth of big data from different sources for extreme value analysis.Classic extreme value theory was extended to obtain an accelerated max-stable distribution family for modelling competing risk-based extreme data in Cao and Zhang (2021). In this paper, we establish probability models for power normalized maxima and minima from competing risks. The limit distributions consist of an extensional new accelerated max-stable and min-stable distribution family (termed as the accelerated p-max/p-min stable distribution), and its left-truncated version. The limit types of distributions are determined principally by the sample generating process and the interplay among the competing risks, which are illustrated by common examples. Further, the statistical inference concerning the maximum likelihood estimation and model diagnosis of this model was investigated. Numerical studies show first the efficient approximation of all limit scenarios as well as its comparable convergence rate in contrast with those under linear normalization, and then present the maximum likelihood estimation and diagnosis of accelerated p-max/p-min stable models for simulated data sets. Finally, two real datasets concerning annual maximum of ground level ozone and survival times of Stanford heart plant demonstrate the performance of our accelerated p-max and accelerated p-min stable models.

READ FULL TEXT
research
06/18/2022

Application of a General Family of Bivariate Distributions in Modelling Dependent Competing Risks Data with Associated Model Selection

In this article, a general family of bivariate distributions is used to ...
research
10/09/2017

ABC model selection for spatial max-stable models applied to South Australian maximum temperature data

Max-stable processes are a common choice for modelling spatial extreme d...
research
08/18/2020

Analysis of Left Truncated and Right Censored Competing Risks Data

In this article, the analysis of left truncated and right censored compe...
research
03/30/2019

Strong Consistency of Nonparametric Bayesian Inferential Methods for Multivariate Max-Stable Distributions

Predicting extreme events is important in many applications in risk anal...
research
09/13/2019

Uniform convergence rate of nonparametric maximum likelihood estimator for the current status data with competing risks

We study the uniform convergence rate of the nonparametric maximum likel...
research
10/08/2018

Tilting maximum Lq-Likelihood estimation for extreme values drawing on block maxima

One of the most common anticipated difficulties in applying mainstream m...
research
05/19/2018

An Extended Poisson Family of Life Distribution: A Unified Approach in Competitive and Complementary Risks

In this paper, we introduce a new approach to generate flexible parametr...

Please sign up or login with your details

Forgot password? Click here to reset