28,126 research outputs found
Robust mean absolute deviation problems on networks with linear vertex weights
This article deals with incorporating the mean absolute
deviation objective function in several robust single facility
location models on networks with dynamic evolution
of node weights, which are modeled by means of linear
functions of a parameter. Specifically, we have considered
two robustness criteria applied to the mean absolute
deviation problem: the MinMax criterion, and the MinMax
regret criterion. For solving the corresponding optimization
problems, exact algorithms have been proposed and
their complexities have been also analyzed.Ministerio de Ciencia e Innovación MTM2007-67433-C02-(01,02)Ministerio de Ciencia e Innovación MTM2009-14243Ministerio de Ciencia e Innovación MTM2010-19576-C02-(01,02)Ministerio de Ciencia e Innovación DE2009-0057Junta de AndalucÃa P09-TEP-5022Junta de AndalucÃa FQM-584
The Voice of Optimization
We introduce the idea that using optimal classification trees (OCTs) and
optimal classification trees with-hyperplanes (OCT-Hs), interpretable machine
learning algorithms developed by Bertsimas and Dunn [2017, 2018], we are able
to obtain insight on the strategy behind the optimal solution in continuous and
mixed-integer convex optimization problem as a function of key parameters that
affect the problem. In this way, optimization is not a black box anymore.
Instead, we redefine optimization as a multiclass classification problem where
the predictor gives insights on the logic behind the optimal solution. In other
words, OCTs and OCT-Hs give optimization a voice. We show on several realistic
examples that the accuracy behind our method is in the 90%-100% range, while
even when the predictions are not correct, the degree of suboptimality or
infeasibility is very low. We compare optimal strategy predictions of OCTs and
OCT-Hs and feedforward neural networks (NNs) and conclude that the performance
of OCT-Hs and NNs is comparable. OCTs are somewhat weaker but often
competitive. Therefore, our approach provides a novel insightful understanding
of optimal strategies to solve a broad class of continuous and mixed-integer
optimization problems
Discrete Convex Functions on Graphs and Their Algorithmic Applications
The present article is an exposition of a theory of discrete convex functions
on certain graph structures, developed by the author in recent years. This
theory is a spin-off of discrete convex analysis by Murota, and is motivated by
combinatorial dualities in multiflow problems and the complexity classification
of facility location problems on graphs. We outline the theory and algorithmic
applications in combinatorial optimization problems
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