Interior Point Polynomial Algorithms in Convex Programming
Written for specialists working in optimization, mathematical programming, or control theory. The general theory of path-following and potential reduction interior point polynomial time methods, interior point methods, interior point methods for linear and quadratic programming, polynomial time methods for nonlinear convex programming, efficient computation methods for control problems and variational inequalities, and acceleration of path-following methods are covered. In this book, the authors describe the first unified theory of polynomial-time interior-point methods. Their approach provides a simple and elegant framework in which all known polynomial-time interior-point methods can be explained and analyzed; this approach yields polynomial-time interior-point methods for a wide variety of problems beyond the traditional linear and quadratic programs.
Product details
June 2006Paperback
9780898715156
415 pages
255 × 177 × 25 mm
0.852kg
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Table of Contents
- 1. Self-concordant functions and Newton method
- 2. Path-following interior-point methods
- 3. Potential Reduction interior-point methods
- 4. How to construct self- concordant barriers
- 5. Applications in convex optimization
- 6.Variational inequalities with monotone operators
- 7. Acceleration for linear and linearly constrained quadratic problems
- Bibliography
- Appendix 1
- Appendix 2.