Title of article
Event-driven and Attribute-driven Robustness
Author/Authors
Namakshenas, M School of Industrial Engineering - Iran University of Science and Technology, Tehran, Iran , Pishvaee, M.S School of Industrial Engineering - Iran University of Science and Technology, Tehran, Iran , Mahdavi Mazdeh, M School of Industrial Engineering - Iran University of Science and Technology, Tehran, Iran
Pages
13
From page
78
To page
90
Abstract
Over five decades have passed since the first wave of robust optimization studies conducted by
Soyster and Falk. It is outstanding that real-life applications of robust optimization are still swept
aside; there is much more potential for investigating the exact nature of uncertainties to obtain
intelligent robust models. For this purpose, in this study, we investigate a more refined
description of the uncertain events including (1) event-driven and (2) attribute-driven. Classical
methods transform convex programming classes of uncertainty sets. The structural properties of
uncertain events are analyzed to obtain a more refined description of the uncertainty polytopes.
Hence, tractable robust models with a decent degree of conservatism are introduced to avoid the
over-protection induced by classical uncertainty sets.
Keywords
Robust optimization , Convex optimization , Uncertainty events , Uncertainty sets
Journal title
Astroparticle Physics
Serial Year
2017
Record number
2451745
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