The Cumulative Residual Mathai--Haubold Entropy and its Non-parametric Inference
By: Anija C. R, Smitha S., Sudheesh K. Kattumannil
We introduce the cumulative residual Mathai--Haubold entropy (CRMHE) and investigate its properties. We then propose a dynamic counterpart, the dynamic cumulative residual Mathai--Haubold entropy (DCRMHE), and establish its uniqueness in characterizing the distribution function. Non-parametric estimators for the CRMHE and DCRMHE are developed based on the kernel density estimation of the survival function. The efficacy of the estimators is assessed through a comprehensive Monte Carlo simulation study. The relevance of the proposed DCRMHE estimator is illustrated using two real-world datasets: on the failure times of 70 aircraft windshields and failure times of 40 randomly selected mechanical switches.
Similar Papers
On estimation of weighted cumulative residual Tsallis entropy
Statistics Theory
Finds patterns in data to test things.
Approximating evidence via bounded harmonic means
Computation
Improves computer guesses about which idea is best.
Bayesian Semiparametric Joint Dynamic Model for Multitype Recurrent Events and a Terminal Event
Methodology
Helps doctors predict heart attack risks better.