Testing exponentiality based on Progressively Type-I interval censored data
Keywords:
Entropy; Non-parametric statistics; Type-I Interval Censoring
Abstract
In this paper we propose non-parametric estimates for the information measure entropy when a progressively Type-I interval censored data is available. Different non-parametric approaches are used for deriving the estimates. Entropy-based tests of exponentiality are proposed. The critical values and the power values of the proposed tests are simulated and studied under various alternatives. Real life data sets are presented and analysed.
Published
2025-08-13
How to Cite
Qubbaj, H. (2025). Testing exponentiality based on Progressively Type-I interval censored data. Statistics, Optimization & Information Computing. https://doi.org/10.19139/soic-2310-5070-2394
Issue
Section
Research Articles
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