Several strategies for computing the best subset regression models are proposed. Some of the algorithms are modified versions of existing regression-tree methods, while others are new. The first algorithm selects the best subset models within a given size range. It uses a reduced search space and is found to outperform computationally the existing branch-and-bound algorithm. The properties and computational aspects of the proposed algorithm are discussed in detail. The second new algorithm preorders the variables inside the regression tree. A radius is defined in order to measure the distance of a node from the root of the tree. The algorithm applies the preordering to all nodes which have a smaller distance than a certain radius that is gi...
A computationally efficient branch-and-bound strategy for finding the subsets of the most statistica...
Artículo de publicación ISIThis paper deals with the problem of finding the globally optimal subset ...
Efficient parallel algorithms for computing all possible subset regression models are proposed. The ...
Several strategies for computing the best subset regression models are proposed. Some of the algorit...
Riassunto: An efcient branch-and-bound algorithm for computing the best-subset regression models is ...
An efficient branch-and-bound algorithm for computing the best-subset regression models is proposed....
This thesis is focused on the development of computationally efficient procedures for regression mod...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
Selecting an optimal subset of k out of d features for linear regression models given n training ins...
2011-07-29In this dissertation, we study the subset selection problem for prediction. It deals with ...
A regression graph to enumerate and evaluate all possible subset regression models is introduced. Th...
A new algorithm for solving subset regression problems is described. The algorithm performs a QR dec...
We address the so-called subset selection problem in multiple linear regression where the objective ...
A computationally efficient branch-and-bound strategy for finding the subsets of the most statistica...
Artículo de publicación ISIThis paper deals with the problem of finding the globally optimal subset ...
Efficient parallel algorithms for computing all possible subset regression models are proposed. The ...
Several strategies for computing the best subset regression models are proposed. Some of the algorit...
Riassunto: An efcient branch-and-bound algorithm for computing the best-subset regression models is ...
An efficient branch-and-bound algorithm for computing the best-subset regression models is proposed....
This thesis is focused on the development of computationally efficient procedures for regression mod...
grantor: University of TorontoThe problem of determining which variables to keep in a lin...
Originally published in 1990, the first edition of Subset Selection in Regression filled a significa...
With the ever-increasing amount of computational power available, so broadens the horizon of statist...
Selecting an optimal subset of k out of d features for linear regression models given n training ins...
2011-07-29In this dissertation, we study the subset selection problem for prediction. It deals with ...
A regression graph to enumerate and evaluate all possible subset regression models is introduced. Th...
A new algorithm for solving subset regression problems is described. The algorithm performs a QR dec...
We address the so-called subset selection problem in multiple linear regression where the objective ...
A computationally efficient branch-and-bound strategy for finding the subsets of the most statistica...
Artículo de publicación ISIThis paper deals with the problem of finding the globally optimal subset ...
Efficient parallel algorithms for computing all possible subset regression models are proposed. The ...