1 | Introduction |
2 | The Condition Number |
3 | The Largest Singular Value of a Matrix |
4 | Gaussian Elimination without Pivoting |
5 | Smoothed Analysis of Gaussian Elimination without Pivoting |
6 | Growth Factors of Partial and Complete Pivoting
Speeding up GE of Graphs with Low Bandwidth or Small Separators |
7 | Spectral Partitioning Introduced |
8 | Spectral Partitioning of Planar Graphs |
9 | Spectral Paritioning of Well-Shaped Meshes and Nearest Neighbor Graphs
Turner's Theorem for Bandwidth of Semi-Random Graphs |
10 | Smoothed Analysis and Monotone Adversaries for Bandwidth and Graph Bisection
McSherry's Spectral Bisection Algorithm |
11 | Introduction to Linear Programming
von Neumann's Algorithm, Primal and Dual Simplex Methods
Duality |
12 | Strong Duality Theorem of Linear Programming
Renegar's Condition Numbers |
13 | Analysis of von Neumann's Algorithm |
14 | Worst-Case Complexity of the Simplex Method |
15 | The Expected Number of Facets of the Convex Hull of Gaussian Random Points in the Plane |
16 | The Expected Number of Facets of the Convex Hull of Gaussian Random Points in the Plane (cont.) |
17 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints |
18 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints: Distance Bound |
19 | The Expected Number of Facets of the Shadow of a Polytope given by Gaussian Random Constraints: Angle Bound and Overview of Phase 1 |