The original version of the rough sets theory has proved to be particularly
useful in the analysis of multiattribute classification problems under inc
onsistency following from information granulation, i.e. objects having the
same description but belonging to different classes. It fails, however, whe
n attributes with preference-ordered domains (criteria) have to be taken in
to account. In order to deal with problems of multicriteria decision analys
is (MCDA), such as sorting, choice or ranking, the authors have extended th
e original rough sets theory in a number of directions. The main extension
is the substitution of the indiscernibility relation by a dominance relatio
n which permits approximation of ordered decision classes in multicriteria
sorting. Second extension was necessary to approximate preference relations
in multicriteria choice and ranking problems; it requires substitution of
the data table by a pairwise comparison table, where each row corresponds t
o a pair of actions described by binary relations on particular criteria. I
n all these MCDA problems, the extended rough set approach ends with a set
of "if..., then..." decision rules playing the role of a preference model.
It is more general than the classical functional or relational model and mo
re understandable for the users. These rules have a more general syntax tha
n the rules following from the original rough set approach and they are abl
e to handle two kinds of inconsistencies, one with respect to indiscernibil
ity and another with respect to dominance, instead of the first one only. I
n the extended rough set approach, discretization of quantitative attribute
s is not necessary and it is possible to consider attributes and criteria w
ithin the same decision problem. The paper summarizes these extensions and
concentrates on description of the rough set approach to the multicriteria
sorting problem, illustrated by a case study of airline company financial r
atings.