AbstractWe describe and survey in this paper iterative algorithms for solving the discrete maximum entropy problem with linear equality constraints. This problem has applications e.g. in image reconstruction from projections, transportation planning, and matrix scaling. In particular we study local convergence and asymptotic rate of convergence as a function of the iteration parameter. For the trip distribution problem in transportation planning and the equivalent problem of scaling a positive matrix to achieve a priori given row and column sums, it is shown how the iteration parameters can be chosen in an optimal way. We also consider the related problem of finding a matrix X, diagonally similar to a given matrix, such that corresponding r...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
We present an iterative procedure which asymptotically scales the infinity norm of both rows and col...
We study the computational complexity of finding extremal principal minors of a positive definite ma...
AbstractWe describe and survey in this paper iterative algorithms for solving the discrete maximum e...
Many transportation problems can be formulated as a linearly-constrained convex programming problem ...
Given an n × m nonnegative matrix A = (a_{ij}) and positive integral vectors r in R^n and c in R^m h...
We consider the problem of image reconstruction from a finite number of projections over the space L...
We consider a new nonlinear relaxation for the Constrained Maximum-Entropy Sampling Problem -- the p...
Abstract. We show that a simple geometric result suffices to derive the form of the optimal solution...
AbstractWe have four primary objectives in this paper. First, we introduce a problem called truncate...
AbstractA cutting-plane type algorithm for solving entropy optimization problems with a finite numbe...
AbstractWe have four primary objectives in this paper. First, we introduce a problem called truncate...
We show that a simple geometric result suffices to derive the form of the optimal solution in a larg...
Consider the set of all sequences of n outcomes, each taking one of m values, whose frequency vector...
16 pagesWe tackle the inverse problem of reconstructing an unknown finite measure $\mu$ from a noisy...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
We present an iterative procedure which asymptotically scales the infinity norm of both rows and col...
We study the computational complexity of finding extremal principal minors of a positive definite ma...
AbstractWe describe and survey in this paper iterative algorithms for solving the discrete maximum e...
Many transportation problems can be formulated as a linearly-constrained convex programming problem ...
Given an n × m nonnegative matrix A = (a_{ij}) and positive integral vectors r in R^n and c in R^m h...
We consider the problem of image reconstruction from a finite number of projections over the space L...
We consider a new nonlinear relaxation for the Constrained Maximum-Entropy Sampling Problem -- the p...
Abstract. We show that a simple geometric result suffices to derive the form of the optimal solution...
AbstractWe have four primary objectives in this paper. First, we introduce a problem called truncate...
AbstractA cutting-plane type algorithm for solving entropy optimization problems with a finite numbe...
AbstractWe have four primary objectives in this paper. First, we introduce a problem called truncate...
We show that a simple geometric result suffices to derive the form of the optimal solution in a larg...
Consider the set of all sequences of n outcomes, each taking one of m values, whose frequency vector...
16 pagesWe tackle the inverse problem of reconstructing an unknown finite measure $\mu$ from a noisy...
We describe an algorithm to efficiently compute maximum entropy densities, i.e. densities maximizing...
We present an iterative procedure which asymptotically scales the infinity norm of both rows and col...
We study the computational complexity of finding extremal principal minors of a positive definite ma...