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Journal ArticleDOI

Decomposition Principle for Linear Programs

George B. Dantzig, +1 more
- 01 Feb 1960 - 
- Vol. 8, Iss: 1, pp 101-111
TLDR
A technique is presented for the decomposition of a linear program that permits the problem to be solved by alternate solutions of linear sub-programs representing its several parts and a coordinating program that is obtained from the parts by linear transformations.
Abstract
A technique is presented for the decomposition of a linear program that permits the problem to be solved by alternate solutions of linear sub-programs representing its several parts and a coordinating program that is obtained from the parts by linear transformations. The coordinating program generates at each cycle new objective forms for each part, and each part generates in turn from its optimal basic feasible solutions new activities columns for the interconnecting program. Viewed as an instance of a “generalized programming problem” whose columns are drawn freely from given convex sets, such a problem can be studied by an appropriate generalization of the duality theorem for linear programming, which permits a sharp distinction to be made between those constraints that pertain only to a part of the problem and those that connect its parts. This leads to a generalization of the Simplex Algorithm, for which the decomposition procedure becomes a special case. Besides holding promise for the efficient computation of large-scale systems, the principle yields a certain rationale for the “decentralized decision process” in the theory of the firm. Formally the prices generated by the coordinating program cause the manager of each part to look for a “pure” sub-program analogue of pure strategy in game theory, which he proposes to the coordinator as best he can do. The coordinator finds the optimum “mix” of pure sub-programs using new proposals and earlier ones consistent with over-all demands and supply, and thereby generates new prices that again generates new proposals by each of the parts, etc. The iterative process is finite.

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Journal ArticleDOI

Bilevel linear programming

TL;DR: The features of Bilevel Linear Programming are reviewed by presenting prior results as well as providing new results, including the capability of the problem to formulate any piecewise linear function and its connection to other optimization problems.
Journal ArticleDOI

Massive Data Discrimination via Linear Suppot Vector Machines

TL;DR: Numerical results on fully dense publicly available datasets, numbering 20,000 to 1 million points in 32-dimensional space, confirm the theoretical results and demonstrate the ability to handle very large problems.
Journal ArticleDOI

Airline crew scheduling : State-of-the-art

TL;DR: This paper surveys different approaches studied and discusses the state-of-the-art in solution methodology for the airline crew scheduling problem.
Proceedings Article

Decomposition Techniques for Planning in Stochastic Domains

TL;DR: This paper presents algorithms that decompose planning problems into smaller problems given an arbitrary partition of the state space and shows how properties of a specified partition affect the time and storage required for these algorithms.
Journal ArticleDOI

Generalized Network Problems Yielding Totally Balanced Games

Ehud Kalai, +1 more
- 01 Oct 1982 - 
TL;DR: A class of multiperson mathematical optimization problems is considered and is shown to generate cooperative games with nonempty cores that identify a special class of network flow problems for which every point in the core corresponds to an optimal dual solution.