Klee–Minty cube

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The Klee–Minty cube or Klee–Minty polytope (named after Victor Klee and George J. Minty) is a unit hypercube of variable dimension whose corners have been perturbed. Klee and Minty demonstrated that George Dantzig's simplex algorithm has poor worst-case performance when initialized at one corner of their "squashed cube". On the three-dimensional version, the simplex algorithm and the criss-cross algorithm visit all 8 corners in the worst case.

Klee Minty cube for shadow vertex simplex method.

In particular, many optimization algorithms for linear optimization exhibit poor performance when applied to the Klee–Minty cube. In 1973 Klee and Minty showed that Dantzig's simplex algorithm was not a polynomial-time algorithm when applied to their cube.[1] Later, modifications of the Klee–Minty cube have shown poor behavior both for other basis-exchange pivoting algorithms and also for interior-point algorithms.[2]

Description

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The Klee–Minty cube was originally specified with a parameterized system of linear inequalities, with the dimension as the parameter. The cube in two-dimensional space is a squashed square, and the "cube" in three-dimensional space is a squashed cube. Illustrations of the "cube" have appeared besides algebraic descriptions.[3] The Klee–Minty polytope is given by:[4]  

This has   variables,   constraints other than the   non-negativity constraints, and   vertices, just as a  -dimensional hypercube does. If the objective function to be maximized is   and if the initial vertex for the simplex algorithm is the origin, then the algorithm as formulated by Dantzig visits all   vertices, finally reaching the optimal vertex  .

Computational complexity

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The Klee–Minty cube has been used to analyze the performance of many algorithms, both in the worst case and on average. The time complexity of an algorithm counts the number of arithmetic operations sufficient for the algorithm to solve the problem. For example, Gaussian elimination requires the order of   operations, and so it is said to have polynomial time-complexity because its complexity is bounded by a cubic polynomial. There are examples of algorithms that do not have polynomial-time complexity. For example, a generalization of Gaussian elimination called Buchberger's algorithm has for its complexity an exponential function of the problem data (the degree of the polynomials and the number of variables of the multivariate polynomials). Because exponential functions eventually grow much faster than polynomial functions, an exponential complexity implies that an algorithm has slow performance on large problems.

Worst case

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An illustration of a three-dimensional polytope which is the feasible region for a linear programming problem. The simplex algorithm traverses the edges between vertices until it reaches an optimal vertex. In the case shown, the simplex algorithm takes five steps. However, the simplex algorithm visits every vertex in the worst case of a problem whose feasible region is the Klee–Minty cube, so the number of steps rises exponentially with the dimension of the problem.

In mathematical optimization, the Klee–Minty cube is an example that shows the worst-case computational complexity of many algorithms of linear optimization. It is a deformed cube with exactly  2D corners in dimension  . Klee and Minty showed that Dantzig's simplex algorithm visits all corners of a (perturbed) cube in dimension   in the worst case.[5]

Modifications of the Klee–Minty construction showed similar exponential time complexity for other pivoting rules of simplex type, which maintain primal feasibility, such as Bland's rule.[6] Another modification showed that the criss-cross algorithm, which does not maintain primal feasibility, also visits all the corners of a modified Klee–Minty cube.[7] Like the simplex algorithm, the criss-cross algorithm visits all 8 corners of the three-dimensional cube in the worst case.

Path-following algorithms

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Further modifications of the Klee–Minty cube have shown the poor performance of central-path–following algorithms for linear optimization, in that the central path comes arbitrarily close to each of the corners of a cube. This "vertex-stalking" performance is surprising because such path-following algorithms have polynomial-time complexity for linear optimization.[8]

Average case

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The Klee–Minty cube has also inspired research on average-case complexity. When eligible pivots are made randomly (and not by the rule of steepest descent), Dantzig's simplex algorithm needs on average quadratically many steps (on the order of  .[9] Standard variants of the simplex algorithm take on average   steps for a cube.[a] However according to Fukuda & Namiki (1994), when it is initialized at a random corner of the cube, the criss-cross algorithm visits only   additional corners.[11] Both the simplex algorithm and the criss-cross algorithm visit exactly 3 additional corners of the three-dimensional cube on average.

See also

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References

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Notes

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  1. ^ More generally, for the simplex algorithm, the expected number of steps is proportional to   for linear-programming problems that are randomly drawn from the Euclidean unit sphere, as proved by Borgwardt and by Smale.[10]

Citations

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  1. ^ Klee & Minty (1972).
  2. ^ Deza, Nematollahi & Terlaky (2008).
  3. ^
  4. ^ Greenberg (1997).
  5. ^
  6. ^
  7. ^
  8. ^
  9. ^ Gartner & Ziegler (1994).
  10. ^ Borgwardt (1987).
  11. ^

Bibliography

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  • Bland, Robert G. (May 1977). "New finite pivoting rules for the simplex method". Mathematics of Operations Research. 2 (2): 103–107. doi:10.1287/moor.2.2.103. JSTOR 3689647. MR 0459599.
  • Borgwardt, Karl-Heinz (1987). The simplex method: A probabilistic analysis. Algorithms and Combinatorics (Study and Research Texts). Vol. 1. Berlin: Springer-Verlag. ISBN 978-3-540-17096-9. MR 0868467.
  • Deza, Antoine; Nematollahi, Eissa; Terlaky, Tamás (May 2008). "How good are interior point methods? Klee–Minty cubes tighten iteration-complexity bounds" (PDF). Mathematical Programming. 113 (1): 1–14. CiteSeerX 10.1.1.214.111. doi:10.1007/s10107-006-0044-x. MR 2367063. S2CID 156325.
  • Fukuda, Komei; Namiki, Makoto (March 1994). "On extremal behaviors of Murty's least index method". Mathematical Programming. 64 (1): 365–370. doi:10.1007/BF01582581. MR 1286455. S2CID 21476636.
  • Greenberg, Harvey J. (1997). "Klee-Minty Polytope Shows Exponential Time Complexity of Simplex Method" (PDF). University of Colorado at Denver.
  • Fukuda, Komei; Terlaky, Tamás (1997). Liebling, Thomas M.; de Werra, Dominique (eds.). "Criss-cross methods: A fresh view on pivot algorithms". Mathematical Programming, Series B. 79 (Papers from the 16th International Symposium on Mathematical Programming held in Lausanne, 1997): 369–395. CiteSeerX 10.1.1.36.9373. doi:10.1007/BF02614325. MR 1464775. S2CID 2794181. Postscript preprint.
  • Gartner, B.; Ziegler, G. M. (1994). "Randomized simplex algorithms on Klee-Minty cubes". Proceedings 35th Annual Symposium on Foundations of Computer Science. IEEE. pp. 502–510. CiteSeerX 10.1.1.24.1405. doi:10.1109/SFCS.1994.365741. ISBN 978-0-8186-6580-6. S2CID 8090478.
  • Klee, Victor; Minty, George J. (1972). "How good is the simplex algorithm?". In Shisha, Oved (ed.). Inequalities III (Proceedings of the Third Symposium on Inequalities held at the University of California, Los Angeles, Calif., September 1–9, 1969, dedicated to the memory of Theodore S. Motzkin). New York-London: Academic Press. pp. 159–175. MR 0332165.
  • Megiddo, Nimrod; Shub, Michael (February 1989). "Boundary Behavior of Interior Point Algorithms in Linear Programming". Mathematics of Operations Research. 14 (1): 97–146. CiteSeerX 10.1.1.80.184. doi:10.1287/moor.14.1.97. JSTOR 3689840. MR 0984561.
  • Murty, Katta G. (1983). Linear programming. New York: John Wiley & Sons. pp. xix+482. ISBN 978-0-471-09725-9. MR 0720547.
  • Roos, C. (1990). "An exponential example for Terlaky's pivoting rule for the criss-cross simplex method". Mathematical Programming. Series A. 46 (1): 79–84. doi:10.1007/BF01585729. MR 1045573. S2CID 33463483.
  • Terlaky, Tamás; Zhang, Shu Zhong (1993). "Pivot rules for linear programming: A Survey on recent theoretical developments". Annals of Operations Research. 46 (Degeneracy in optimization problems, number 1): 203–233. CiteSeerX 10.1.1.36.7658. doi:10.1007/BF02096264. ISSN 0254-5330. MR 1260019. S2CID 6058077.
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Algebraic description with illustration

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The first two links have both an algebraic construction and a picture of a three-dimensional Klee–Minty cube:

Pictures with no linear system

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