Title
Elicitation of Sugeno Integrals: A Version Space Learning Perspective
Abstract
Sugeno integrals can be viewed as multiple criteria aggregation functions which take into account a form of synergy between criteria. As such, Sugeno integrals constitute an important family of tools for modeling qualitative preferences defined on ordinal scales. The elicitation of Sugeno integrals starts from a set of data that associates a global evaluation assessment to situations described by multiple criteria values. A consistent set of data corresponds to a non-empty family of Sugeno integrals with which the data are compatible. This elicitation process presents some similarity with the revision process underlying the version space approach in concept learning, when new data are introduced. More precisely, the elicitation corresponds to a graded extension of version space learning, recently proposed in the framework of bipolar possibility theory. This paper establishes the relation between these two formal settings.
Year
DOI
Venue
2009
10.1007/978-3-642-04125-9_42
ISMIS
Keywords
Field
DocType
version space learning perspective,consistent set,multiple criteria value,data corresponds,sugeno integrals,important family,concept learning,sugeno integral,multiple criterion,new data,elicitation process,elicitation corresponds,possibility theory
Multiple criteria,Ordinal number,Learning theory,Computer science,Concept learning,Possibility theory,Artificial intelligence,Version space
Conference
Volume
ISSN
Citations 
5722
0302-9743
10
PageRank 
References 
Authors
0.71
8
3
Name
Order
Citations
PageRank
Henri Prade1105491445.02
Agnès Rico212920.74
Mathieu Serrurier326726.94