Empirical Likelihood Based Inference for a Divergence Measure Based on Survival Extropy
Empirical Likelihood Based Inference for a Divergence Measure Based on Survival Extropy
We consider a divergence measure based on survival extropy and derive its non-parametric estimators based on U-statistics, empirical distribution-functions, and kernel density. Further, we construct confidence intervals for the divergence measure using the jackknife empirical likelihood (JEL) method and the normal approximation method with a jackknife pseudo-value-based variance estimator. A comprehensive simulation study is conducted to compare the performance of the measure with existing divergence measures. In addition, we assess the finite-sample performance of various estimators for the measure. The findings highlight the effectiveness of the divergence measure and its estimators in practical applications.
Naresh Garg、Isha Dewan、Sudheesh Kumar Kattumannil
数学
Naresh Garg,Isha Dewan,Sudheesh Kumar Kattumannil.Empirical Likelihood Based Inference for a Divergence Measure Based on Survival Extropy[EB/OL].(2025-07-21)[2025-08-10].https://arxiv.org/abs/2507.15810.点此复制
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