This paper presents a new method for calculating the conditional probability of any multi-valued predicate given particular information about the individual case. This calculation is based on the principle of Maximum Entropy (ME), sometimes called the principle of least information, and gives the most unbiased probability estimate given the available evidence. Previous methods for computing maximum entropy values shows that they are either very restrictive in the probabilistic information (constraints) they can use or combinatorially explosive. The computational complexity of the new procedure depends on the inter-connectedness of the constraints, but in practical cases it is small. In addition, the maximum entropy method can give a measure...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
This paper describes a method for learning the joint probability distribution of a set of variables ...
In expert systems, we elicit the probabilities of different statements from the experts. However, to...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
This paper is on the combination of two powerful approaches to uncertain reasoning: logic programmin...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
We consider the problem of incomplete conditional probability tables in Bayesian nets, noting that m...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
Abstract—In many practical situations, we have only partial information about the probabilities. In ...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
This paper describes a method for learning the joint probability distribution of a set of variables ...
In expert systems, we elicit the probabilities of different statements from the experts. However, to...
This paper is a review of a particular approach to the method of maximum entropy as a general framew...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
A desirable feature of a database system is its ability to reason with probabilistic information. Th...
This paper is on the combination of two powerful approaches to uncertain reasoning: logic programmin...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
Some problems occurring in Expert Systems can be resolved by employing a causal (Bayesian) network a...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
We consider the problem of incomplete conditional probability tables in Bayesian nets, noting that m...
The Principle of Maximum Entropy is often used to update probabilities due to evidence instead of pe...
Abstract—In many practical situations, we have only partial information about the probabilities. In ...
The maximum entropy (MaxEnt) method is a relatively new technique especially suitable for reconstruc...
The combination of mathematical models and uncertainty measures can be applied in the area of data m...
This paper describes a method for learning the joint probability distribution of a set of variables ...