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Satisficing Models Under Uncertainty
Author(s) -
Patrick Jaillet,
Sanjay Dominik Jena,
Tsan Sheng Ng,
Melvyn Sim
Publication year - 2022
Publication title -
informs journal on optimization
Language(s) - English
Resource type - Journals
eISSN - 2575-1492
pISSN - 2575-1484
DOI - 10.1287/ijoo.2021.0070
Subject(s) - satisficing , mathematical optimization , probabilistic logic , mathematics , representation (politics) , optimization problem , decision problem , function (biology) , probability distribution , computer science , algorithm , artificial intelligence , statistics , evolutionary biology , politics , political science , law , biology
Satisficing, as an approach to decision making under uncertainty, aims at achieving solutions that satisfy the problem’s constraints as well as possible. Mathematical optimization problems that are related to this form of decision making include the P-model. In this paper, we propose a general framework of satisficing decision criteria and show a representation termed the S-model, of which the P-model and robust optimization models are special cases. We then focus on the linear optimization case and obtain a tractable probabilistic S-model, termed the T-model, whose objective is a lower bound of the P-model. We show that when probability densities of the uncertainties are log-concave, the T-model can admit a tractable concave objective function. In the case of discrete probability distributions, the T-model is a linear mixed integer optimization problem of moderate dimensions. Our computational experiments on a stochastic maximum coverage problem suggest that the T-model solutions can be highly competitive compared with standard sample average approximation models.

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