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Goodness-of-fit tests for progressively Type-II censored data: Application to the engineering reliability data from continuous distribution

机译:渐进式II类删失数据的拟合优度检验:应用于连续分布的工程可靠性数据

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This study proposes two new methods of goodness-of-fit (GOF) tests for progressively Type-II censored data from any continuous distribution. For the first method, we transform the original censored sample into an approximately independent and identically distributed normality complete sample, and perform a complete sample GOF test for normality thereafter based on the empirical cumulative distribution function (ECDF). This method merely requires one table of critical values for all the distributions. For the second method, we propose a parametric bootstrap GOF test based on test statistics proposed by Pakyari and Balakrishnan. This method does not require data transformation, but directly uses the observed censored sample to the GOF test. This proposed approach does not require some tables for critical values, which are constructed using parametric bootstrap samples. We estimate the power of the two proposed methods for several well-known parameter distributions, and compare the power of parametric bootstrap method with that of Pakyari and Balakrishnan through various censoring schemes. Simulation results reveal that two new methods both possess good power properties in detecting departure from the null distribution, and the parametric bootstrap method provides as good or better power than the method of Pakyari and Balakrishnan. Lastly, the proposed methods are applied to two real data sets from engineering reliability aspect to prove their practical versatility.
机译:本研究提出了两种新的拟合优度 (GOF) 检验方法,用于来自任何连续分布的渐进式 II 型删失数据。对于第一种方法,我们将原始删失样本转换为近似独立且分布相同的正态性完全样本,然后基于经验累积分布函数(ECDF)进行完整的样本GOF正态性检验。此方法只需要一个包含所有分布的临界值表。对于第二种方法,我们提出了基于Pakyari和Balakrishnan提出的测试统计量的参数化bootstrap GOF测试。该方法不需要数据转换,而是直接使用观测到的删失样本进行GOF检验。这种提出的方法不需要一些临界值表,这些表是使用参数化引导样本构建的。我们估计了两种方法在几个众所周知的参数分布中的有效性,并通过各种审查方案将参数自举方法与Pakyari和Balakrishnan的方法进行了比较。仿真结果表明,两种新方法在检测偏离零分布方面均具有良好的幂特性,参数自举方法的功效与Pakyari和Balakrishnan方法相同或更好。最后,从工程可靠性方面将所提方法应用于两个真实数据集,以证明其实用性。

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