Model Selection Based on Tracking Interval under Unified Hybrid Censored Samples

IF 0.1 Q4 STATISTICS & PROBABILITY
A. Sayyareh, H. Panahi
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引用次数: 2

Abstract

. The aim of statistical modeling is to identify the model that most closely ap-proximates the underlying process. Akaike information criterion (AIC) is commonly used for model selection but the precise value of AIC has no direct interpretation. In this paper we use a normalization of a di ff erence of Akaike criteria in comparing between the two rival models under unified hybrid censoring scheme. Asymptotic properties of maximum likelihood estimator based on the missing information principle are derived. Also, asymptotic distribution of the normalized di ff erence of AICs is obtained and it is used to construct an interval, say tracking interval, for comparing the two competing models. Monte Carlo simulations are performed to examine how the proposed interval works for di ff erent censoring schemes. Two real datasets have been analyzed for illustrative purposes. The first is selecting between Weibull and generalized exponential distributions for main component of spearmint essential oil purification data. The second is the choice between models of the lifetimes of 20 electronic components. principle, Model selection, Tracking interval, Unified hybrid censoring, Vuong’s test. MSC: 62N01;62N03;62E20.
统一混合截尾样本下基于跟踪区间的模型选择
. 统计建模的目的是确定最接近潜在过程的模型。赤池信息准则(Akaike information criterion, AIC)是常用的模型选择准则,但AIC的精确值并没有直接的解释。本文在统一混合滤波方案下,采用赤池判据差分的归一化方法对两种竞争模型进行了比较。给出了基于缺失信息原理的极大似然估计的渐近性质。此外,还得到了aic归一化差的渐近分布,并将其用于构造一个区间,即跟踪区间,用于比较两个竞争模型。通过蒙特卡罗模拟来检验所提出的区间在不同的滤波方案下是如何工作的。为了说明问题,我们分析了两个真实的数据集。首先是对留兰香精油净化数据的主要成分进行威布尔分布和广义指数分布的选择。二是选择20种电子元件的寿命模型。原理,模型选择,跟踪区间,统一混合滤波,Vuong测试。硕士:62 n01; 62 n03; 62 e20。
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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CiteScore
1.50
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