Perceptual reasoning based solution methodology for linguistic optimization problems
Prashant K Gupta, Pranab K. Muhuri

TL;DR
This paper introduces a perceptual reasoning-based approach using perceptual computing for solving linguistic optimization problems, improving the modeling of linguistic information with interval type-2 fuzzy sets.
Contribution
It proposes a novel perceptual reasoning methodology utilizing perceptual computing and interval type-2 fuzzy sets for linguistic optimization problems, extending previous 2-tuple models.
Findings
Effective solution methodology for SOLOPs using perceptual reasoning.
Extended approach applicable to multi-objective linguistic optimization problems.
Demonstrated advantages over traditional methods like Tsukamoto inference.
Abstract
Decision making in real-life scenarios may often be modeled as an optimization problem. It requires the consideration of various attributes like human preferences and thinking, which constrain achieving the optimal value of the problem objectives. The value of the objectives may be maximized or minimized, depending on the situation. Numerous times, the values of these problem parameters are in linguistic form, as human beings naturally understand and express themselves using words. These problems are therefore termed as linguistic optimization problems (LOPs), and are of two types, namely single objective linguistic optimization problems (SOLOPs) and multi-objective linguistic optimization problems (MOLOPs). In these LOPs, the value of the objective function(s) may not be known at all points of the decision space, and therefore, the objective function(s) as well as problem constraints…
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Taxonomy
TopicsMulti-Criteria Decision Making · Fuzzy Logic and Control Systems · Constraint Satisfaction and Optimization
