Maximum dynamic entropy models

Author:

Asadi Majid,Ebrahimi Nader,Hamedani G. G.,Soofi Ehsan S.

Abstract

A formal approach to produce a model for the data-generating distribution based on partial knowledge is the well-known maximum entropy method. In this approach, partial knowledge about the data-generating distribution is formulated in terms of some information constraints and the model is obtained by maximizing the Shannon entropy under these constraints. Frequently, in reliability analysis the problem of interest is the lifetime beyond an age t. In such cases, the distribution of interest for computing uncertainty and information is the residual distribution. The information functions involving a residual life distribution depend on t, and hence are dynamic. The maximum dynamic entropy (MDE) model is the distribution with the density that maximizes the dynamic entropy for all t. We provide a result that relates the orderings of dynamic entropy and the hazard function for distributions with monotone densities. Applications include dynamic entropy ordering within some parametric families of distributions, orderings of distributions of lifetimes of systems and their components connected in series and parallel, record values, and formulation of constraints for the MDE model in terms of the evolution paths of the hazard function and mean residual lifetime function. In particular, we identify classes of distributions in which some well-known distributions, including the mixture of two exponential distributions and the mixture of two Pareto distributions, are the MDE models.

Publisher

Cambridge University Press (CUP)

Subject

Statistics, Probability and Uncertainty,General Mathematics,Statistics and Probability

Reference10 articles.

Cited by 37 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Extropy: Characterizations and dynamic versions;Journal of Applied Probability;2023-06-02

2. A new lifetime distribution by maximizing entropy: properties and applications;Probability in the Engineering and Informational Sciences;2023-02-28

3. Some new findings on the cumulative residual Tsallis entropy;Journal of Computational and Applied Mathematics;2022-01

4. Smoothed kernel estimation of bivariate residual entropy function;Communications in Statistics - Simulation and Computation;2021-07-26

5. Maximum entropy approach to reliability;Physical Review E;2020-01-03

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