This article studies the role of model uncertainties in sensitivity and probability analysis of reliability. The measure of reliability is failure probability. The failure probability is analysed using the Bernoulli distribution with binary outcomes of success (0) and failure (1). Deeper connections between Shannon entropy and variance are explored. Model uncertainties increase the heterogeneity in the data 0 and 1. The article proposes a new methodology for quantifying model uncertainties based on the equality of variance and entropy. This methodology is briefly called “variance = entropy”. It is useful for stochastic computational models without additional information. The “variance = entropy” rule estimates the “safe” failure probability...
Uncertainties are unavoidable in the description of real-life engineering systems. The quantificatio...
The present study on the characterization of probability distributions using the residual entropy fu...
Since its evolution, the concept of Entropy has been applied in various fields like Computer Science...
This article presents new sensitivity measures in reliability-oriented global sensitivity analysis. ...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
The article analytically summarizes the idea of applying Shannon’s principle of entropy maximization...
The article analytically summarizes the idea of applying Shannon’s principle of entropy maximization...
Stochastic comparison has been an important direction of research in various area. This can be done ...
Stochastic comparison has been an important direction of research in various area. This can be done ...
ABSTRACT: This paper dealswith the sensitivity analysis ofmodel output, using entropy. By the past, ...
When information about a distribution consists of statistical moments only, a self-consistent approa...
When information about a distribution consists of statistical moments only, a selfconsistent approac...
Many classification models produce a probability distribution as the outcome of a prediction. This i...
Markov-reward models are often used to analyze the reliability and performability of computer system...
To optimize contributions of uncertain input variables on the statistical parameter of given model, ...
Uncertainties are unavoidable in the description of real-life engineering systems. The quantificatio...
The present study on the characterization of probability distributions using the residual entropy fu...
Since its evolution, the concept of Entropy has been applied in various fields like Computer Science...
This article presents new sensitivity measures in reliability-oriented global sensitivity analysis. ...
This dissertation explores the use of Shannon’s entropy and mutual information to quantify uncertain...
The article analytically summarizes the idea of applying Shannon’s principle of entropy maximization...
The article analytically summarizes the idea of applying Shannon’s principle of entropy maximization...
Stochastic comparison has been an important direction of research in various area. This can be done ...
Stochastic comparison has been an important direction of research in various area. This can be done ...
ABSTRACT: This paper dealswith the sensitivity analysis ofmodel output, using entropy. By the past, ...
When information about a distribution consists of statistical moments only, a self-consistent approa...
When information about a distribution consists of statistical moments only, a selfconsistent approac...
Many classification models produce a probability distribution as the outcome of a prediction. This i...
Markov-reward models are often used to analyze the reliability and performability of computer system...
To optimize contributions of uncertain input variables on the statistical parameter of given model, ...
Uncertainties are unavoidable in the description of real-life engineering systems. The quantificatio...
The present study on the characterization of probability distributions using the residual entropy fu...
Since its evolution, the concept of Entropy has been applied in various fields like Computer Science...