On Gradient Methods for Approaching Constrained Maxima
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A summary of the authors' previous work on gradient methods. The possibility is discussed of convergence in the large when gradient methods are applied to linear programming problems. In addition, computational difficulties encountered in applying the authors' methods to linear programming problems are examined.
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