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Published in: Fuzzy Optimization and Decision Making 2/2017

31-05-2016

Handling imprecise evaluations in multiple criteria decision aiding and robust ordinal regression by n-point intervals

Authors: Salvatore Corrente, Salvatore Greco, Roman Słowiński

Published in: Fuzzy Optimization and Decision Making | Issue 2/2017

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Abstract

We consider imprecise evaluation of alternatives in multiple criteria ranking problems. The imprecise evaluations are represented by n-point intervals which are defined by the largest interval of possible evaluations and by its subintervals sequentially nested one in another. This sequence of subintervals is associated with an increasing sequence of plausibility, such that the plausibility of a subinterval is greater than the plausibility of the subinterval containing it. We explain the intuition that stands behind this proposal, and we show the advantage of n-point intervals compared to other methods dealing with imprecise evaluations. Although n-point intervals can be applied in any multiple criteria decision aiding (MCDA) method, in this paper, we focus on their application in robust ordinal regression which, unlike other MCDA methods, takes into account all compatible instances of an adopted preference model, which reproduce an indirect preference information provided by the decision maker. An illustrative example shows how the method can be applied in practice.

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Appendix
Available only for authorised users
Footnotes
1
Let us remember that by c we denote the number of nested intervals in the n-point intervals, which correspond to c levels of plausibility.
 
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Metadata
Title
Handling imprecise evaluations in multiple criteria decision aiding and robust ordinal regression by n-point intervals
Authors
Salvatore Corrente
Salvatore Greco
Roman Słowiński
Publication date
31-05-2016
Publisher
Springer US
Published in
Fuzzy Optimization and Decision Making / Issue 2/2017
Print ISSN: 1568-4539
Electronic ISSN: 1573-2908
DOI
https://doi.org/10.1007/s10700-016-9244-x

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