Obtaining least absolute value estimates for a two-way classification model |
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Authors: | Ronald D. Armstrong Joyce J. Elam John W. Hultz |
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Affiliation: | 1. The University of Texas , Austin, Texas;2. The Wharton School , Philadelphia, Pennsylvania;3. Analysis, Research and Computation , P. O. 4067, Austin, Texas |
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Abstract: | The importance of the two-way classification model is well known, but the standard method of analysis is least squares. Often, the data of the model calls for a more robust estimation technique. This paper demonstrates the equivalence between the problem of obtaining least absolute value estimates for the two-way classification model and a capacitated transportation problem. A special purpose primal algorithm is developed to provide the least absolute value estimates. A computational comparison is made between an implementation of this specialized algorithm and a standard capacitated transportation code. |
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Keywords: | L1 norm dual method linear programming networks |
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