A comparative study of algorithms for matrix balancing

A comparative study of algorithms for matrix balancing

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Article ID: iaor19911317
Country: United States
Volume: 38
Issue: 3
Start Page Number: 189
End Page Number: 195
Publication Date: May 1990
Journal: Operations Research
Authors: ,
Abstract:

The problem of adjusting the entries of a large matrix to satisfy prior consistency requirements occurs in economics, urban planning, statistics, demography, and stochastic modeling; these problems are called Matrix Balancing Problems. The authors describe five applications of matrix balancing and compare the algorithmic and computational performance of balancing procedures that represent the two primary approaches for matrix balancing-matrix scaling and nonlinear optimization. The algorithms they study are the RAS algorithm, a diagonal similarity scaling algorithm, and a truncated Newton algorithm for network optimization. The authors present results from computational experiments with large-scale problems based on producing consistent estimates of Social Accounting Matrices for developing countries.

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