Data granulation by the principles of uncertainty
Lorenzo Livi, Alireza Sadeghian

TL;DR
This paper introduces a universal data granulation framework based on uncertainty principles, applicable across data types and models, and demonstrates its effectiveness with a new technique generating type-2 fuzzy sets.
Contribution
The paper presents a novel, data-type independent framework for information granulation based on uncertainty principles, and introduces a new distance-based method for generating type-2 fuzzy sets.
Findings
The framework effectively captures input data uncertainty in generated models.
The new technique produces type-2 fuzzy sets that reflect data uncertainty accurately.
Experiments on feature vectors and graphs validate the approach's versatility.
Abstract
Researches in granular modeling produced a variety of mathematical models, such as intervals, (higher-order) fuzzy sets, rough sets, and shadowed sets, which are all suitable to characterize the so-called information granules. Modeling of the input data uncertainty is recognized as a crucial aspect in information granulation. Moreover, the uncertainty is a well-studied concept in many mathematical settings, such as those of probability theory, fuzzy set theory, and possibility theory. This fact suggests that an appropriate quantification of the uncertainty expressed by the information granule model could be used to define an invariant property, to be exploited in practical situations of information granulation. In this perspective, a procedure of information granulation is effective if the uncertainty conveyed by the synthesized information granule is in a monotonically increasing…
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