## Convex Analysis and Nonlinear Optimization: Theory and ExamplesOptimization is a rich and thriving mathematical discipline. The theory underlying current computational optimization techniques grows ever more sophisticated. The powerful and elegant language of convex analysis unifies much of this theory. The aim of this book is to provide a concise, accessible account of convex analysis and its applications and extensions, for a broad audience. It can serve as a teaching text, at roughly the level of first year graduate students. While the main body of the text is self-contained, each section concludes with an often extensive set of optional exercises. The new edition adds material on semismooth optimization, as well as several new proofs that will make this book even more self-contained. |

### From inside the book

Results 1-5 of 36

The function f is

**strictly convex**if the inequality holds strictly whenever a and y are distinct in C and 0 < X < 1. It is easy to see that a

**strictly convex**function can have at most one minimizer. Requiring the function f to have ...

Proposition 1.1.5 For a

**convex**set C C E, a

**convex**function f : C – R. has bounded level sets if and only if it satisfies the growth ... (b) We see later (Theorem 3.1.11) that the function – log is

**convex**on the

**strictly**positive reals.

(S: is not

**strictly convex**) Find nonzero matrices X and Y in Sł such that RLX #REY and (X +Y)/2 g S$4. (A nonlattice ordering) Suppose the matrix Z in S satisfies 0 0 0 1 1 0 w=|| || |and w=| | <= W = Z. (a) By considering diagonal W, ...

(Nearest points) (a) Prove that if a function f : C → R is

**strictly convex**then it has at most one global minimizer on C. (b) Prove the function f(x) = |x-y|*/2 is

**strictly convex**on E for any point y in E. (c) Suppose C is a nonempty, ...

(c) Prove the power function p is

**strictly convex**. (d) Use part (a) of Exercise 8 to show that the conservation of current equations in part (b) have a unique solution. ** (Matrix completion [77]) For a set A c{(i,j)|1 < i < j < n}, ...

### What people are saying - Write a review

### Contents

15 | |

Fenchel Duality | 33 |

Convex Analysis | 65 |

Special Cases | 97 |

Nonsmooth Optimization | 123 |

KarushKuhnTucker Theory | 153 |

Fixed Points | 179 |

Infinite Versus Finite Dimensions | 209 |

List of Results and Notation | 221 |

Bibliography | 241 |

Index | 253 |

### Other editions - View all

Convex Analysis and Nonlinear Optimization: Theory and Examples Jonathan M. Borwein,Adrian S. Lewis No preview available - 2000 |