An interior boundary pivotal solution algorithm for linear programmes with the optimal solution-based sensitivity region (Q1635378)
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scientific article; zbMATH DE number 6881328
| Language | Label | Description | Also known as |
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| English | An interior boundary pivotal solution algorithm for linear programmes with the optimal solution-based sensitivity region |
scientific article; zbMATH DE number 6881328 |
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An interior boundary pivotal solution algorithm for linear programmes with the optimal solution-based sensitivity region (English)
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6 June 2018
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Summary: We have developed a full gradient method that consists of three phases. The initialisation phase provides the initial tableau that may not have a full set of basis. The push phase uses a full gradient vector of the objective function to obtain a feasible vertex. This is then followed by a series of pivotal steps using the sub-gradient, which leads to an optimal solution (if exists) in the final iteration phase. At each of these iterations, the sub-gradient provides the desired direction of motion within the feasible region. The algorithm hits and/or moves on the constraint hyper-planes and their intersections to reach an optimal vertex (if exists). The algorithm works in the original decision variables and slack/surplus space, therefore, there is no need to introduce any new extra variables such as artificial variables. The simplex solution algorithm can be considered as a sub-more efficient. Given a linear programme has a known unique non-degenerate primal/dual solution; we develop the largest sensitivity region for linear programming models-based only the optimal solution rather than the final tableau. It allows for simultaneous, dependent/independent changes on the cost coefficients and the right-hand side of constraint. Numerical illustrative examples are given.
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linear programming
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full gradient simplex algorithm
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artificial-free
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pivoting algorithm
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feasible direction method
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simplex standard-form free
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big-M free
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largest sensitivity region
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