Dempster–Shafer theory: Difference between revisions
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'''Dempster–Shafer | {{short description|A mathematical theory of evidence}} | ||
[[File:Dempster in Brest.JPG|thumb|right|Arthur P. Dempster, one of the developers of the Dempster-Shafer theory]] | |||
The '''Dempster–Shafer theory''' is a mathematical theory of evidence that allows one to combine evidence from different sources and arrive at a degree of belief (represented by a mathematical object called a belief function) that takes into account all the available evidence. It is a generalization of the [[Bayesian probability]] theory and is used in various fields such as [[artificial intelligence]], [[statistics]], and [[decision theory]]. | |||
==Overview== | ==Overview== | ||
Dempster–Shafer | The Dempster–Shafer theory, also known as the theory of belief functions, was developed by [[Arthur P. Dempster]] and [[Glenn Shafer]]. It provides a framework for modeling epistemic uncertainty, which is uncertainty about the state of the world due to incomplete or ambiguous information. | ||
In this theory, evidence is represented by a set of propositions, and each proposition is assigned a belief mass. The belief mass is a number between 0 and 1, and the sum of the belief masses for all propositions is 1. The belief mass represents the degree of belief that a particular proposition is true, given the available evidence. | |||
== | ==Belief Functions== | ||
A belief function is a function that assigns a belief mass to each subset of a given set of propositions, called the frame of discernment. The frame of discernment is a finite set of mutually exclusive and exhaustive propositions that represent all possible states of the world. | |||
The belief function is defined as: | |||
The | |||
- '''Belief (Bel)''': The belief in a proposition is the sum of the belief masses of all subsets of the proposition. | |||
- '''Plausibility (Pl)''': The plausibility of a proposition is the sum of the belief masses of all subsets that intersect with the proposition. | |||
The relationship between belief and plausibility is given by: | |||
Dempster's | |||
\[ \text{Belief}(A) \leq \text{Plausibility}(A) \] | |||
==Dempster's Rule of Combination== | |||
Dempster's rule of combination is a method for combining multiple belief functions into a single belief function. It is used to aggregate evidence from different sources. | |||
The rule is defined as follows: | |||
\[ m(A) = \frac{\sum_{B \cap C = A} m_1(B) \cdot m_2(C)}{1 - \sum_{B \cap C = \emptyset} m_1(B) \cdot m_2(C)} \] | |||
where \( m_1 \) and \( m_2 \) are the belief functions to be combined, and \( A \) is a subset of the frame of discernment. | |||
==Applications== | ==Applications== | ||
Dempster–Shafer | The Dempster–Shafer theory is used in various applications, including: | ||
- [[Sensor fusion]]: Combining data from multiple sensors to improve the accuracy of information. | |||
- [[Expert systems]]: Aggregating expert opinions in decision-making processes. | |||
- [[Risk assessment]]: Evaluating the likelihood of different outcomes based on uncertain information. | |||
==Criticism and | ==Criticism and Limitations== | ||
While the Dempster–Shafer theory provides a flexible framework for dealing with uncertainty, it has been criticized for its computational complexity and the potential for counterintuitive results when combining conflicting evidence. | |||
== | ==Related pages== | ||
* [[Bayesian probability]] | * [[Bayesian probability]] | ||
* [[ | * [[Fuzzy logic]] | ||
* [[ | * [[Probability theory]] | ||
* [[ | * [[Artificial intelligence]] | ||
[[Category:Mathematical theories]] | |||
[[Category:Uncertainty]] | |||
[[Category:Artificial intelligence]] | |||
Latest revision as of 05:15, 16 February 2025
A mathematical theory of evidence
The Dempster–Shafer theory is a mathematical theory of evidence that allows one to combine evidence from different sources and arrive at a degree of belief (represented by a mathematical object called a belief function) that takes into account all the available evidence. It is a generalization of the Bayesian probability theory and is used in various fields such as artificial intelligence, statistics, and decision theory.
Overview[edit]
The Dempster–Shafer theory, also known as the theory of belief functions, was developed by Arthur P. Dempster and Glenn Shafer. It provides a framework for modeling epistemic uncertainty, which is uncertainty about the state of the world due to incomplete or ambiguous information.
In this theory, evidence is represented by a set of propositions, and each proposition is assigned a belief mass. The belief mass is a number between 0 and 1, and the sum of the belief masses for all propositions is 1. The belief mass represents the degree of belief that a particular proposition is true, given the available evidence.
Belief Functions[edit]
A belief function is a function that assigns a belief mass to each subset of a given set of propositions, called the frame of discernment. The frame of discernment is a finite set of mutually exclusive and exhaustive propositions that represent all possible states of the world.
The belief function is defined as:
- Belief (Bel): The belief in a proposition is the sum of the belief masses of all subsets of the proposition. - Plausibility (Pl): The plausibility of a proposition is the sum of the belief masses of all subsets that intersect with the proposition.
The relationship between belief and plausibility is given by:
\[ \text{Belief}(A) \leq \text{Plausibility}(A) \]
Dempster's Rule of Combination[edit]
Dempster's rule of combination is a method for combining multiple belief functions into a single belief function. It is used to aggregate evidence from different sources.
The rule is defined as follows:
\[ m(A) = \frac{\sum_{B \cap C = A} m_1(B) \cdot m_2(C)}{1 - \sum_{B \cap C = \emptyset} m_1(B) \cdot m_2(C)} \]
where \( m_1 \) and \( m_2 \) are the belief functions to be combined, and \( A \) is a subset of the frame of discernment.
Applications[edit]
The Dempster–Shafer theory is used in various applications, including:
- Sensor fusion: Combining data from multiple sensors to improve the accuracy of information. - Expert systems: Aggregating expert opinions in decision-making processes. - Risk assessment: Evaluating the likelihood of different outcomes based on uncertain information.
Criticism and Limitations[edit]
While the Dempster–Shafer theory provides a flexible framework for dealing with uncertainty, it has been criticized for its computational complexity and the potential for counterintuitive results when combining conflicting evidence.