JOURNAL ARTICLE

Fuzzy evidential reasoning

Abstract

A classification architecture is presented in which the domain knowledge and belief measures are represented using the principles of possibility theory. The representations and support generation strategies are designed for a classification system whose objective is to identify radar types from signals received by passive sensors. A measure of belief is generated to indicate the support for each of the alternatives on the basis of the acquired evidence, using a possibility distribution over the frame of discernment. The immediate transformation of evidence to possibility distributions avoids the computational difficulties associated with utilizing the joint possibility distribution over the entire set of attributes that characterize the domain objects. The desired possibility distribution is obtained by combining the compatibility measures for each hypothesis independently.

Keywords:
Discernment Computer science Artificial intelligence Fuzzy logic Frame (networking) Domain (mathematical analysis) Fuzzy set Basis (linear algebra) Evidential reasoning approach Data mining Machine learning Mathematics Decision support system

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Topics

Multi-Criteria Decision Making
Social Sciences →  Decision Sciences →  Management Science and Operations Research
Fuzzy Logic and Control Systems
Physical Sciences →  Computer Science →  Artificial Intelligence
Logic, Reasoning, and Knowledge
Physical Sciences →  Computer Science →  Artificial Intelligence

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