Combination of sources of evidence with different discounting factors based on a new dissimilarity measure

The sources of evidence may have different reliability and importance in real applications for decision making. The estimation of the discounting (weighting) factors when the prior knowledge is unknown have been regularly studied until recently. In the past, the determination of the weighting factors focused only on reliability discounting rule and it was mainly dependent on the dissimilarity measure between basic belief assignments (bba's) represented by an evidential distance. Nevertheless, it is very difficult to characterize efficiently the dissimilarity only through an evidential distance. Thus, both a distance and a conflict coefficient based on probabilistic transformations BetP are proposed to characterize the dissimilarity. The distance represents the difference between bba's, whereas the conflict coefficient reveals the divergence degree of the hypotheses that two belief functions strongly support. These two aspects of dissimilarity are complementary in a certain sense, and their fusion is used as the dissimilarity measure. Then, a new estimation method of weighting factors is presented by using the proposed dissimilarity measure. In the evaluation of weight of a source, both its dissimilarity with other sources and their weighting factors are considered. The weighting factors can be applied in the both importance and reliability discounting rules, but the selection of the adapted discounting rule should depend on the actual application. Simple numerical examples are given to illustrate the interest of the proposed approach.

[1]  Philippe Smets,et al.  Analyzing the combination of conflicting belief functions , 2007, Inf. Fusion.

[2]  Qi Liu,et al.  Combining belief functions based on distance of evidence , 2004, Decis. Support Syst..

[3]  Thierry Denoeux,et al.  An evidence-theoretic k-NN rule with parameter optimization , 1998, IEEE Trans. Syst. Man Cybern. Part C.

[4]  Jean Dezert,et al.  UNM Digital Repository UNM Digital Repository Fusion of Sources of Evidence with Different Importances and Fusion of Sources of Evidence with Different Importances and Reliabilities Reliabilities , 2022 .

[5]  J. Jaffray Linear utility theory for belief functions , 1989 .

[6]  Glenn Shafer,et al.  Readings in Uncertain Reasoning , 1990 .

[7]  Christophe Osswald,et al.  Conflict measure for the discounting operation on belief functions , 2008, 2008 11th International Conference on Information Fusion.

[8]  Glenn Shafer,et al.  A Mathematical Theory of Evidence , 2020, A Mathematical Theory of Evidence.

[9]  Branko Ristic,et al.  The TBM global distance measure for the association of uncertain combat ID declarations , 2006, Inf. Fusion.

[10]  Florentin Smarandache,et al.  Advances and Applications of DSmT for Information Fusion , 2004 .

[11]  Fabio Cuzzolin,et al.  A Geometric Approach to the Theory of Evidence , 2008, IEEE Transactions on Systems, Man, and Cybernetics, Part C (Applications and Reviews).

[12]  Philippe Smets,et al.  Decision making in the TBM: the necessity of the pignistic transformation , 2005, Int. J. Approx. Reason..

[13]  Jean Dezert,et al.  A new probabilistic transformation of belief mass assignment , 2008, 2008 11th International Conference on Information Fusion.

[14]  Éloi Bossé,et al.  A new distance between two bodies of evidence , 2001, Inf. Fusion.

[15]  Lotfi A. Zadeh,et al.  A Simple View of the Dempster-Shafer Theory of Evidence and Its Implication for the Rule of Combination , 1985, AI Mag..

[16]  T. Denœux Conjunctive and disjunctive combination of belief functions induced by nondistinct bodies of evidence , 2008 .

[17]  Catherine K. Murphy Combining belief functions when evidence conflicts , 2000, Decis. Support Syst..

[18]  Weiru Liu,et al.  Analyzing the degree of conflict among belief functions , 2006, Artif. Intell..

[19]  Arthur P. Dempster,et al.  A Generalization of Bayesian Inference , 1968, Classic Works of the Dempster-Shafer Theory of Belief Functions.