An In-Depth Look at Information Fusion Rules & the Unification of Fusion Theories
Florentin Smarandache

TL;DR
This paper provides a comprehensive overview of various information fusion rules, introduces new rules and formulas, and unifies different fusion theories to enhance understanding and application in data fusion tasks.
Contribution
It introduces new fusion rules, unifies existing theories, and proposes improvements based on fuzzy and neutrosophic set concepts, offering a broad and detailed framework for information fusion.
Findings
Extensive catalog of fusion rules with formulas and examples
Introduction of new fusion rules and unification of theories
Proposals for improving fusion rules using fuzzy and neutrosophic sets
Abstract
This paper may look like a glossary of the fusion rules and we also introduce new ones presenting their formulas and examples: Conjunctive, Disjunctive, Exclusive Disjunctive, Mixed Conjunctive-Disjunctive rules, Conditional rule, Dempster's, Yager's, Smets' TBM rule, Dubois-Prade's, Dezert-Smarandache classical and hybrid rules, Murphy's average rule, Inagaki-Lefevre-Colot-Vannoorenberghe Unified Combination rules [and, as particular cases: Iganaki's parameterized rule, Weighting Average Operator, minC (M. Daniel), and newly Proportional Conflict Redistribution rules (Smarandache-Dezert) among which PCR5 is the most exact way of redistribution of the conflicting mass to non-empty sets following the path of the conjunctive rule], Zhang's Center Combination rule, Convolutive x-Averaging, Consensus Operator (Josang), Cautious Rule (Smets), ?-junctions rules (Smets), etc. and three new…
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Taxonomy
TopicsMulti-Criteria Decision Making
