Explaining the excellent practical performance of the simplex method for linear programming has been a major topic of research for over 50 years. One of the most successful frameworks for understanding the simplex method was given by Spielman and Teng (JACM ‘04), who developed the notion of smoothed analysis. Starting from an arbitrary linear program with d variables and n constraints, Spielman and Teng analyzed the expected runtime over random perturbations of the LP (smoothed LP), where variance σ2 Gaussian noise is added to the LP data. In particular, they gave a two-stage shadow vertex simplex algorithm which uses an expected Õ(d55n86(1+σ−30)) number of simplex pivots to solve the smoothed LP. Their analysis and runtime was substantiall...
The article provides an asymptotic probabilistic analysis of the variance of the number of pivot ste...
The thesis begins by giving background in linear programming and Simplex methods. Topics covered inc...
We study the simplex method over polyhedra satisfying certain “discrete curvature” lower bounds, wh...
Explaining the excellent practical performance of the simplex method for linear programming has been...
Explaining the excellent practical performance of the simplex method for linear programming has been...
Presented as part of the Workshop on Algorithms and Randomness on May 17, 2018 at 2:45 p.m. in the K...
The simplex method for linear programming is known to be highly efficient in practice, and understan...
In this chapter, we give a technical overview of smoothed analyses of the shadow vertex simplex meth...
In this chapter, we give a technical overview of smoothed analyses of the shadow vertex simplex meth...
Abstract. We introduce the smoothed analysis of algorithms, which continuously interpolates between ...
The smoothed analysis of algorithms is concerned with the expected running time of an algor...
The smoothed analysis of algorithms is concerned with the expected running time of an algor...
We show that the shadow vertex simplex algorithm can be used to solve linear programs in strongly po...
The simplex method, created by George Dantzig, optimally solves a linear program by pivoting. Dantzi...
Despite their very good empirical performance most of the simplex algorithm's variants require expon...
The article provides an asymptotic probabilistic analysis of the variance of the number of pivot ste...
The thesis begins by giving background in linear programming and Simplex methods. Topics covered inc...
We study the simplex method over polyhedra satisfying certain “discrete curvature” lower bounds, wh...
Explaining the excellent practical performance of the simplex method for linear programming has been...
Explaining the excellent practical performance of the simplex method for linear programming has been...
Presented as part of the Workshop on Algorithms and Randomness on May 17, 2018 at 2:45 p.m. in the K...
The simplex method for linear programming is known to be highly efficient in practice, and understan...
In this chapter, we give a technical overview of smoothed analyses of the shadow vertex simplex meth...
In this chapter, we give a technical overview of smoothed analyses of the shadow vertex simplex meth...
Abstract. We introduce the smoothed analysis of algorithms, which continuously interpolates between ...
The smoothed analysis of algorithms is concerned with the expected running time of an algor...
The smoothed analysis of algorithms is concerned with the expected running time of an algor...
We show that the shadow vertex simplex algorithm can be used to solve linear programs in strongly po...
The simplex method, created by George Dantzig, optimally solves a linear program by pivoting. Dantzi...
Despite their very good empirical performance most of the simplex algorithm's variants require expon...
The article provides an asymptotic probabilistic analysis of the variance of the number of pivot ste...
The thesis begins by giving background in linear programming and Simplex methods. Topics covered inc...
We study the simplex method over polyhedra satisfying certain “discrete curvature” lower bounds, wh...