Abstract: Copulas are a general way of describing dependence between two or more random variables. When we only have partial information about the dependence, i.e., when several different copulas are consistent with our knowledge, it is often necessary to select one of these copulas. A frequently used method of selecting this copula is the maximum entropy approach, when we select a copula with the largest entropy. However, in some cases, the maximum entropy approach leads to an unreasonable selection – e.g., even if we know that the two random variables are positively correlated, the maximum entropy approach completely ignores this information. In this paper, we show how to properly modify the maximum entropy approach so that it will lead t...
Abstract The copula–entropy theory combines the entropy theory and the copula theory. The entropy th...
We propose a new approach to recover relative entropy measures of dependence from limited infor mati...
Entropy is a measure of uncertainty and has been commonly used for various applications, including p...
Copulas are a general way of describing dependence between two or more random variables. When we onl...
This paper provides a new approach to recover relative entropy measures of contemporaneous dependenc...
Unlike uncertain dynamical systems in physical sciences where models for prediction are somewhat giv...
In this paper, a method for characterizing the dependence between two random variables is presented ...
A new nonparametric model of maximum-entropy (MaxEnt) copula density function is proposed, which off...
International audienceNew families of copulas are obtained in a two-step process : first considering...
This paper proposes an entropy-based method to construct a new class of copulas - the most entropic ...
Abstract: Maximum entropy copulae introduced by Bedford and Meeuwissen (1997) provide normative expe...
A maximum entropy copula is the copula associated with the joint distribution, with prescribed margi...
We discuss the connection between information and copula theories by showing that a copula can be em...
Traditionally, the Maximum Entropy technique is used to select a probability distribution in situati...
A maximum entropy copula is the copula associated with the joint distribution, with prescribed margi...
Abstract The copula–entropy theory combines the entropy theory and the copula theory. The entropy th...
We propose a new approach to recover relative entropy measures of dependence from limited infor mati...
Entropy is a measure of uncertainty and has been commonly used for various applications, including p...
Copulas are a general way of describing dependence between two or more random variables. When we onl...
This paper provides a new approach to recover relative entropy measures of contemporaneous dependenc...
Unlike uncertain dynamical systems in physical sciences where models for prediction are somewhat giv...
In this paper, a method for characterizing the dependence between two random variables is presented ...
A new nonparametric model of maximum-entropy (MaxEnt) copula density function is proposed, which off...
International audienceNew families of copulas are obtained in a two-step process : first considering...
This paper proposes an entropy-based method to construct a new class of copulas - the most entropic ...
Abstract: Maximum entropy copulae introduced by Bedford and Meeuwissen (1997) provide normative expe...
A maximum entropy copula is the copula associated with the joint distribution, with prescribed margi...
We discuss the connection between information and copula theories by showing that a copula can be em...
Traditionally, the Maximum Entropy technique is used to select a probability distribution in situati...
A maximum entropy copula is the copula associated with the joint distribution, with prescribed margi...
Abstract The copula–entropy theory combines the entropy theory and the copula theory. The entropy th...
We propose a new approach to recover relative entropy measures of dependence from limited infor mati...
Entropy is a measure of uncertainty and has been commonly used for various applications, including p...