Subset selection in multiple linear regression aims to choose a subset of candidate explanatory variables that tradeoff fitting error (explanatory power) and model complexity (number of variables selected). We build mathematical programming models for regression subset selection based on mean square and absolute errors, and minimal-redundancy–maximal-relevance criteria. The proposed models are tested using a linear-program-based branch-and-bound algorithm with tailored valid inequalities and big M values and are compared against the algorithms in the literature. For high dimensional cases, an iterative heuristic algorithm is proposed based on the mathematical programming models and a core set concept, and a randomized version of the algorit...
This paper studies feature subset selection in classification using a multiobjective estimation of d...
An automated logistic regression solution framework (ALRSF) is proposed to solve a mixed integer pro...
We propose a novel high-dimensional linear regression estimator: the Discrete Dantzig Selector, whic...
Subset selection for multiple linear regression aims to construct a regression model that minimizes ...
We address the so-called subset selection problem in multiple linear regression where the objective ...
This study presents comparisons of subset selection criteria used to help determine the best regre...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
Machine learning and statistical models are increasingly used in a prediction context and in the pro...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Regression analysis fits predictive models to data on a response variable and corresponding values f...
The problem of determining the best subset has two important aspects: the choice of a criteria defin...
Several strategies for computing the best subset regression models are proposed. Some of the algorit...
With advanced capability in data collection, applications of linear regression analysis now often in...
n the period 1991–2015, algorithmic advances in Mixed Integer Optimization (MIO) coupled with hardwa...
PhD (Science with Business Mathematics), North-West University, Potchefstroom CampusLogistic regress...
This paper studies feature subset selection in classification using a multiobjective estimation of d...
An automated logistic regression solution framework (ALRSF) is proposed to solve a mixed integer pro...
We propose a novel high-dimensional linear regression estimator: the Discrete Dantzig Selector, whic...
Subset selection for multiple linear regression aims to construct a regression model that minimizes ...
We address the so-called subset selection problem in multiple linear regression where the objective ...
This study presents comparisons of subset selection criteria used to help determine the best regre...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
Machine learning and statistical models are increasingly used in a prediction context and in the pro...
Thesis: Ph. D., Massachusetts Institute of Technology, Sloan School of Management, Operations Resear...
Regression analysis fits predictive models to data on a response variable and corresponding values f...
The problem of determining the best subset has two important aspects: the choice of a criteria defin...
Several strategies for computing the best subset regression models are proposed. Some of the algorit...
With advanced capability in data collection, applications of linear regression analysis now often in...
n the period 1991–2015, algorithmic advances in Mixed Integer Optimization (MIO) coupled with hardwa...
PhD (Science with Business Mathematics), North-West University, Potchefstroom CampusLogistic regress...
This paper studies feature subset selection in classification using a multiobjective estimation of d...
An automated logistic regression solution framework (ALRSF) is proposed to solve a mixed integer pro...
We propose a novel high-dimensional linear regression estimator: the Discrete Dantzig Selector, whic...