A statistical approach to the representation of uncertainty in beliefs using spread of opinions

Reasoning with uncertainty is a field with many different approaches and viewpoints, with important applications to sensor design and autonomous system development. It is important to have calculi for propagating measures of "probability" or "likelihood" even in cases of subjecti...

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Veröffentlicht in:IEEE transactions on systems, man and cybernetics. Part A, Systems and humans man and cybernetics. Part A, Systems and humans, 1996-05, Vol.26 (3), p.378-384
Hauptverfasser: Hummel, R., Manevitz, L.
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container_title IEEE transactions on systems, man and cybernetics. Part A, Systems and humans
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description Reasoning with uncertainty is a field with many different approaches and viewpoints, with important applications to sensor design and autonomous system development. It is important to have calculi for propagating measures of "probability" or "likelihood" even in cases of subjective information, and it is just as important to be able to propagate the "certitude" of this information. By choosing the semantics properly, this information can be handled by keeping track of certain statistics on a different probability space, (which we call the opinion space). The semantics assume that the "likelihood" or "probability numbers" are in fact averages over many (perhaps subjective) opinions and that uncertainty is represented by the spread in these opinions, which can be technically maintained by a covariance matrix. Different calculi result from different design choices consistent with this choice of semantics. It also turns out that certain mechanisms that are frequently considered "non-Bayesian", result from specific choices for representing the statistics and dependency assumptions.
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subjects Computer science
Covariance matrix
Filtering
Kalman filters
Probability
Rain
Sensor systems and applications
Statistics
Uncertainty
Weather forecasting
title A statistical approach to the representation of uncertainty in beliefs using spread of opinions
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