Numerous algorithms exist to fit data to nonlinear models of the type used in chemistry, pharmacology, physiology, etc. Most include modules that provide some measure of the reliability of the estimated model parameters. The variance-covariance matrix (VCM) is the common tabulation of information th
Uncertainty measures for evidential reasoning II: A new measure of total uncertainty
β Scribed by Nikhil R. Pal; James C. Bezdek; Rohan Hemasinha
- Publisher
- Elsevier Science
- Year
- 1993
- Tongue
- English
- Weight
- 825 KB
- Volume
- 8
- Category
- Article
- ISSN
- 0888-613X
No coin nor oath required. For personal study only.
β¦ Synopsis
In Part I we discussed limitations of two measures of global (non-fuzzy) uncertainty of Lamata and Moral, and a measure of total (non-fury) uncertainty due to Klir and Ramer and established the need for a new measure. In this paper we propose a set of intuitively desirable axioms for a measure of total uncertainty (TV) associated with a basic assignment m@), and then derive an expression for a (unique) function that satisfies these requirements. Several theorems are proved about the new measure. Our measure is additive, and unlike other TU measures, has a unique maximum. The new measure reduces to Shannon's probabilistic entropy when the basic probability assignment focuses only on singletons. On the other hand, complete ignorance-basic assignment focusing only on the entire set, as a whole-reduces it to Hartley's measure of information.
We show that the computational complexity of the new measure is O(N), whereas previous measures of TU are O(N'). Finally, we compare the new measure to its predecessors by extending the numerical example of Part I so that it includes values of the new measure.
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