It is well known that the most subtle and delicate stage in a variant of the aggregated indices method is the stage of weights estimation because of usual shortage of information about exact values of weight-coefficients. As a rule, we have only
non-numerical (ordinal) information, which can be represented by a system of equalities and inequalities for weights, and/or
non-exact (interval) information, which can be represented by a system of inequalities, which determine only intervals for the weight-coefficients possible values. Usually ordinal and/or interval information is
incomplete (i.e., this information is not enough for one-valued estimation of all weight-coefficients). So, one can say that there is only non-numerical (ordinal), non-exact (interval), and non-complete information (
NNN-information) I about weight-coefficient. As information I about weights is incomplete, then
weight-vector w=(w(1),...,w(m)) is ambiguously determined, i.e., this vector is determined with accuracy to within a set W(I) of all admissible (from the point of view of NNN-information I) weight-vectors. To model such
uncertainty we shall address ourselves to the
concept of Bayesian randomization. In accordance with the concept, an uncertain choice of a weight-vector from set W(I) is modeling by a random choice of an element of the set. Such randomization produces a random
weight-vector W(I)=(W(1;I),...,W(m;I)), which is uniformly distributed on the set W(I). Mathematical expectation of random weight-coefficient W(i;I) may be used as a
numerical estimation of particular index (criterion) q(i) significance, exactness of this estimation being measured by standard deviation of the corresponding
random variable. Since such estimations of single indices significance are determined on the base of NNN-information I, these estimations may be treated as a result of
quantification of the non-numerical, inexact and incomplete information I. An aggregative function Q(q(1),...,q(m)) depends on weight-coefficients. Therefore, random weight-vector (W(1;I),...,W(m;I)) induces randomization of an aggregated index Q, i.e., its transformation in the corresponding
randomized aggregated index Q(I). The looked for average aggregated estimation of objects’ quality level may be identified now with mathematical expectation of corresponded random aggregated index Q(I). The measure of the aggregated estimation's exactness may be identified with the standard deviation of the correspondent random index. ==Applications==