Representing Uncertainty with Information Sets

IEEE Transactions on Fuzzy Systems(2016)

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摘要
We develop new methods for the representation of uncertainty in the granularized information source values by making use of the entropy framework in the possibilistic domain. An information theoretic entropy function is used to map the information source values to information (entropy) values. We term a collection of such information values as an information set. The information values are then used in an adaptive form of this entropy function to formulate Shannon transforms. A few uncertainty measures are derived from these transforms for the quantification of uncertainty. Information set is also extended to other domains such as probabilistic, intuitionistic and probabilistic intuitionistic domains. A biometric application is included to demonstrate the usefulness of the work.
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关键词
hanman-anirban entropy function,shannon transforms,agent,fuzzy sets,information sets,information source,intuitionistic information set,probabilistic information set,uncertainty measures
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