A Variation of the Algorithm to Achieve the Maximum Entropy for Belief Functions
Metadatos
Mostrar el registro completo del ítemEditorial
MDPI
Materia
Belief functions Uncertainty measures Maximum of entropy
Fecha
2023-05-29Referencia bibliográfica
Abellán, J.; Pérez-Lara, A.; Moral-García, S. A Variation of the Algorithm to Achieve the Maximum Entropy for Belief Functions. Entropy 2023, 25, 867. https://doi.org/10.3390/e25060867
Patrocinador
UGR-FEDER funds under Project A-TIC-344-UGR20; FEDER/Junta deAndalucía-Consejería de Transformación Económica, Industria, Conocimiento y Universidades” under Project P20_00159Resumen
Evidence theory (TE), based on imprecise probabilities, is often more appropriate than the
classical theory of probability (PT) to apply in situations with inaccurate or incomplete information.
The quantification of the information that a piece of evidence involves is a key issue in TE. Shannon’s
entropy is an excellent measure in the PT for such purposes, being easy to calculate and fulfilling a
wide set of properties that make it axiomatically the best one in PT. In TE, a similar role is played by
the maximum of entropy (ME), verifying a similar set of properties. The ME is the unique measure
in TE that has such axiomatic behavior. The problem of the ME in TE is its complex computational
calculus, which makes its use problematic in some situations. There exists only one algorithm
for the calculus of the ME in TE with a high computational cost, and this problem has been the
principal drawback found with this measure. In this work, a variation of the original algorithm is
presented. It is shown that with this modification, a reduction in the necessary steps to attain the ME
can be obtained because, in each step, the power set of possibilities is reduced with respect to the
original algorithm, which is the key point of the complexity found. This solution can provide greater
applicability of this measure.