Abstract :
In this article, we propose a method to deal with incomplete
interval-valued hesitant fuzzy preference relations. For this purpose, an additive
transitivity inspired technique for interval-valued hesitant fuzzy preference
relations is formulated which assists in estimating missing preferences. First
of all, we introduce a condition for decision makers providing incomplete information.
Decision makers expressing incomplete data are expected to abide
by the proposed condition. This ensures that the estimated preferences are
well-dened intervals which otherwise may not be possible. Additionally, this
condition eliminates the problem of outlying estimated preferences. After resolving
the issue of incompleteness, this article proposes a ranking rule for
reciprocal and non-reciprocal interval-valued hesitant fuzzy preference relations.
Keywords :
Decision making , Preference modeling , Incomplete preference relations , Hesitant fuzzy preference relations