In a previous MaxEnt conference [11] a method of obtaining MaxEnt univariate distributions under a variety of constraints was presented. The Mathematica function Interpolation [], normally used with numerical data, can also process "semi-symbolic" data, and Lagrange Multiplier equations were solved for a set of symbolic ordinates describing the required MaxEnt probability density function. We apply a more developed version of this approach to finding MaxEnt distributions having prescribed β1 and β2 values, and compare the entropy of the MaxEnt distribution to that of the Pearson family distribution having the same β1 and β2. These MaxEnt distributions do have, in general, greater entropy than the related Pearson distribution. In accordance ...
Calculation of Lagrange multipliers in the construction of maximum entropy distributions in high sto...
The maximum entropy principle introduced by Jaynes proposes that a data distribution should maximize...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
In two previous papers [Stokes 1, 2] a general method of obtaining univariate MaxEnt distributions w...
In this paper a characterization is presented for Pearson's Type II and VII multivariate distributio...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
To Jaynes, in his original paper [1], maxent is 'a method of reasoning which ensures that no unconsc...
Mathematica is used to develops a method of obtaining continuous MaxEnt distributions using the Lagr...
Abstract:- Maximum entropy (MaxEnt) principle is a method for analyzing the available information in...
International audienceThe research addressed here concerns the construction of the probability distr...
Entropy has a very important role in Statistics. In recent studies it can be seen that entropy start...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
In many practical situations, the Maximum Entropy (MaxEnt) approach leads to reasonable distribution...
Categorical data are found in a wide variety of important applications in environmental sciences and...
(Jaynes') Method of (Shannon-Kullback's) Relative Entropy Maximization (REM or MaxEnt) can be - at l...
Calculation of Lagrange multipliers in the construction of maximum entropy distributions in high sto...
The maximum entropy principle introduced by Jaynes proposes that a data distribution should maximize...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...
In two previous papers [Stokes 1, 2] a general method of obtaining univariate MaxEnt distributions w...
In this paper a characterization is presented for Pearson's Type II and VII multivariate distributio...
A common statistical situation concerns inferring an unknown distribution Q(x) from a known distribu...
To Jaynes, in his original paper [1], maxent is 'a method of reasoning which ensures that no unconsc...
Mathematica is used to develops a method of obtaining continuous MaxEnt distributions using the Lagr...
Abstract:- Maximum entropy (MaxEnt) principle is a method for analyzing the available information in...
International audienceThe research addressed here concerns the construction of the probability distr...
Entropy has a very important role in Statistics. In recent studies it can be seen that entropy start...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
In many practical situations, the Maximum Entropy (MaxEnt) approach leads to reasonable distribution...
Categorical data are found in a wide variety of important applications in environmental sciences and...
(Jaynes') Method of (Shannon-Kullback's) Relative Entropy Maximization (REM or MaxEnt) can be - at l...
Calculation of Lagrange multipliers in the construction of maximum entropy distributions in high sto...
The maximum entropy principle introduced by Jaynes proposes that a data distribution should maximize...
<p>The maximum-entropy probability distribution with pairwise constraints for continuous random vari...