A classification problem is presented in which it is desired to assign a new individual or observation with k characteristics to one of two distinct populations based upon historical sets of samples from the two populations. The resulting classification problem is formulated as a mixed-integer programming problem. The solution, which can be obtained through use of a partitioning algorithm based on Benders decomposition, provides a nonparametric classification statistic which minimizes the expected total cost of misclassification. Also, an enumeration algorithm is developed for the special case of k = 2. Monte Carlo studies are reported which compare the results of the enumeration algorithm with Anderson's "normal" procedure for different un...
In a previous paper in this journal, the authors described an implicit enumeration algorithm for the...
In this paper an implicit enumeration algorithm is presented for solving the general integer program...
AbstractA parametric method for dividing a heterogeneous multivariate population into components is ...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Vita -- Texas A&M UniversityThe discrimination problem consisting of classifying an nxl observation ...
Mathematical programming approaches to the statistical classification problem have attracted conside...
In the last twelve years there has been considerable research interest in mathematical programming a...
Many problems in statistics are inherently discrete. When one of these problems also contains an opt...
We study the problem of classifying an individual into one of several populations based on mixed nom...
In this paper, we introduce the Divide and Conquer (D&C) algorithm, a computationally efficient algo...
In this manuscript, we introduce the PC-based software package RAGNU, a utility program that can be ...
The following thesis studies both parametric and non parametric approaches to classification. Among ...
Abstract In classification, with an increasing number of variables, the required number of observati...
In a previous paper in this journal, the authors described an implicit enumeration algorithm for the...
In this paper an implicit enumeration algorithm is presented for solving the general integer program...
AbstractA parametric method for dividing a heterogeneous multivariate population into components is ...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Includes bibliographical references (leaves 79-81)The discrimination problem of classifying an nxl o...
Vita -- Texas A&M UniversityThe discrimination problem consisting of classifying an nxl observation ...
Mathematical programming approaches to the statistical classification problem have attracted conside...
In the last twelve years there has been considerable research interest in mathematical programming a...
Many problems in statistics are inherently discrete. When one of these problems also contains an opt...
We study the problem of classifying an individual into one of several populations based on mixed nom...
In this paper, we introduce the Divide and Conquer (D&C) algorithm, a computationally efficient algo...
In this manuscript, we introduce the PC-based software package RAGNU, a utility program that can be ...
The following thesis studies both parametric and non parametric approaches to classification. Among ...
Abstract In classification, with an increasing number of variables, the required number of observati...
In a previous paper in this journal, the authors described an implicit enumeration algorithm for the...
In this paper an implicit enumeration algorithm is presented for solving the general integer program...
AbstractA parametric method for dividing a heterogeneous multivariate population into components is ...