Modelos de optimización por metas para el cálculo de estimadores en regresión múltiple

dc.creatorLópez Ospina, Héctor Andrés
dc.creatorLópez Ospina, Rafael David
dc.date2010-06-01
dc.identifierhttps://revistas.unimilitar.edu.co/index.php/rcin/article/view/285
dc.identifier10.18359/rcin.285
dc.descriptionThis introductory work shows several multiple regression models and their relevant development as a problem of goal programming (eliminar…optimization by goals). It describes the median regression, weighted median regression, quantile regression, weighted quantile regression, and minimax formulation models. Furthermore, describes their dual formulation. We describe some simple examples to explain the concepts developed and applications of such models on engineering and sciences.
dc.descriptionEste trabajo introductorio presenta y describe diversos modelos de regresión múltiple y su respectiva formulación como un problema de optimización por metas. Se describen los modelos de regresión mediana, regresión mediana ponderada, regresión cuantílica, regresión cuantílica ponderada y formulación minimax. Además, se describe la formulación dual de estos modelos y se presentan algunos ejemplos sencillos se presentan para explicar los conceptos desarrollados y las aplicaciones de dichos modelos en ingeniería y ciencias.
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dc.publisherUniversidad Militar Nueva Granada
dc.relationhttps://revistas.unimilitar.edu.co/index.php/rcin/article/view/285/95
dc.relationhttps://revistas.unimilitar.edu.co/index.php/rcin/article/view/285/1928
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dc.rightsDerechos de autor 2016 Ciencia e Ingeniería Neogranadina
dc.sourceCiencia e Ingenieria Neogranadina; Vol. 20 No. 1 (2010); 133-157
dc.sourceCiencia e Ingeniería Neogranadina; Vol. 20 Núm. 1 (2010); 133-157
dc.sourceCiencia e Ingeniería Neogranadina; v. 20 n. 1 (2010); 133-157
dc.source1909-7735
dc.source0124-8170
dc.subjectMultiple regression models
dc.subjectgoal programming
dc.subjectquantile regression
dc.subjectminimax optimization
dc.subjectconstrained regression.
dc.subjectmodelos de regresión múltiple
dc.subjectprogramación por metas
dc.subjectregresión cuantílica
dc.subjectoptimización minimax
dc.subjectregresión restringida
dc.titleGoal optimization models for the estimators calculus in multiple regression problems
dc.titleModelos de optimización por metas para el cálculo de estimadores en regresión múltiple
dc.typeinfo:eu-repo/semantics/article
dc.typeinfo:eu-repo/semantics/publishedVersion


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