Classification, the development of rules for the allocation of observations to one or more groups, is a fundamental problem in machine learning and has been applied to many problems in medicine and business. We consider aspects of a classification model developed by Gallagher, Lee, and Patterson that is based on a result by Anderson. The model seeks to maximize the probability of correct G-group classification, subject to limits on misclassification probabilities. The mixed-integer programming formulation of the model is an empirical method for estimating the parameters of an optimal classification rule, which are identified as coefficients of linear functions by Anderson. The model is shown to be a consistent method for estimating ...
Copyright © 2009, by the author(s). Please do not quote, cite, or reproduce without permission from ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
Classification is concerned with the development of rules for the allocation of observations to grou...
Group decision making problems are everywhere in our day-to-day lives and have great influence on th...
Mathematical programming approaches to the statistical classification problem have attracted conside...
In this paper, we introduce the Divide and Conquer (D&C) algorithm, a computationally efficient algo...
International audienceMachine Learning models are increasingly used for decision making, in particul...
In this dissertation we study several non-convex and stochastic optimization problems. The common th...
We present a new comprehensive approach to create accurate and interpretable linear classification m...
Optimization has been an important tool in statistics for a long time. For example, the problem of p...
In the last twelve years there has been considerable research interest in mathematical programming a...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
The main focus of the dissertation is to develop decision-making support tools that address nonlinea...
Single-row mixed-integer programming (MIP) problems have been studied thoroughly under many differe...
Copyright © 2009, by the author(s). Please do not quote, cite, or reproduce without permission from ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...
Classification is concerned with the development of rules for the allocation of observations to grou...
Group decision making problems are everywhere in our day-to-day lives and have great influence on th...
Mathematical programming approaches to the statistical classification problem have attracted conside...
In this paper, we introduce the Divide and Conquer (D&C) algorithm, a computationally efficient algo...
International audienceMachine Learning models are increasingly used for decision making, in particul...
In this dissertation we study several non-convex and stochastic optimization problems. The common th...
We present a new comprehensive approach to create accurate and interpretable linear classification m...
Optimization has been an important tool in statistics for a long time. For example, the problem of p...
In the last twelve years there has been considerable research interest in mathematical programming a...
Mathematical programming (MP) can be used for developing classification models for the two–group cl...
The main focus of the dissertation is to develop decision-making support tools that address nonlinea...
Single-row mixed-integer programming (MIP) problems have been studied thoroughly under many differe...
Copyright © 2009, by the author(s). Please do not quote, cite, or reproduce without permission from ...
In recent years, machine learning models are being increasingly deployed in various applications inc...
In this paper we introduce a non-parametric linear programming formulation for the general multigrou...