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Master's Dissertation
DOI
https://doi.org/10.11606/D.55.2018.tde-09042018-083702
Document
Author
Full name
Marcia Aparecida Zanoli Meira e Silva
Institute/School/College
Knowledge Area
Date of Defense
Published
São Carlos, 1995
Supervisor
Committee
Arenales, Marcos Nereu (President)
Ribeiro, Cassilda Maria
Stangenhaus, Gabriela
Title in Portuguese
O PROBLEMA DE APROXIMACAO LINEAR NO L1 E EXTENSOES.
Keywords in Portuguese
Não disponível
Abstract in Portuguese
Este trabalho apresenta uma especialização do Método Primal Simplex para resolver o Problema de Aproximação Linear no L1 e o Problema de Regressão Quantil, os quais são casos particulares de Problema de Programação Linear por Partes. No Problema de Regressão Quantil a função objetivo linear por partes depende de um parâmetro θ e, com pequenas adaptações da pós otimização clássica da Programação Linear, pode-se determinar o intervalo para θ onde a solução do problema fica invariante. Assim, este trabalho apresenta também uma maneira simples para realizar esta análise pós otimização. Além disso, este trabalho apresenta alguns resultados computacionais, utilizando-se de exemplos da literatura.
Title in English
The L1 linear fitting problem and extensions
Keywords in English
Not available
Abstract in English
This work presents a specialized of the Primal Simplex Method in order to solve the Least Absolute Approximation Problem as well as the Regression Quantile Problem, which are particular instances of Piecewise Linear Programming Problem. The piecewise linear objective function of the Regression Quanrile Problem is defmed using a parameter θ and slight modification in the classic post-optimality analyses of Linear Programming can be obtained in order to determine the interval for θ where the solution remains invariant. This work presents a simple manner to get this interval. Furthermore, this work illustrates some computational performance of the implemented method using examples from the literature.
 
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Publishing Date
2018-04-09
 
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