Dynamical search : applications of dynamical systems in search and optimization : interdisciplinary statistics
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Bibliographic Information
Dynamical search : applications of dynamical systems in search and optimization : interdisciplinary statistics
Chapman & Hall/CRC Press, c2000
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Includes bibliographical references and index
Description and Table of Contents
Description
Certain algorithms that are known to converge can be renormalized or "blown up" at each iteration so that their local behavior can be seen. This creates dynamical systems that we can study with modern tools, such as ergodic theory, chaos, special attractors, and Lyapounov exponents. Furthermore, we can translate the rates of convergence into less studied exponents known as Renyi entropies.
This all feeds back to suggest new algorithms with faster rates of convergence. For example, in line-search, we can improve upon the Golden Section algorithm with new classes of algorithms that have their own special-and sometimes chaotic-dynamical systems. The ellipsoidal algorithms of linear and convex programming have fast, "deep cut" versions whose dynamical systems contain cyclic attractors. And ordinary steepest descent has, buried within, a beautiful fractal that controls the gateway to a special two-point attractor. Faster "relaxed" versions exhibit classical period doubling.
Dynamical Search presents a stimulating introduction to a brand new field - the union of dynamical systems and optimization. It will prove fascinating and open doors to new areas of investigation for researchers in both fields, plus those in statistics and computer science.
Table of Contents
INTRODUCTION
CONSISTENCY
Consistency in Discrete Search
Line-Search Algorithms
Consistency in Linear and Convex Programming
RENORMALISATION
Towards a Dynamical System Representation
Renormalisation in Line-Search Algorithms
Renormalisation of Ellipsoid Algorithms
Renormalisation in the Steepest Descent Algorithm
Square Algorithm
RATES OF CONVERGENCE
Ergodic Rates of Convergence
Characteristics of Average Performances
Characteristics of Worst-Case Performances
Counting Characteristic
One-Dimensional Piecewise Linear Mappings
LINE-SEARCH ALGORITHMS
First-Order Line Search
Continued Fraction Expansion and the Gauss Map
Golden-Section Algorithm
Ergodically Optimal Second-Order Line Search Algorithm
Symmetric Algorithms
Midpoint and Window Algorithms
Algorithms Based on Section Invariant Numbers
Comparisons of GS, GS4, GS40 and Window Algorithms
ELLIPSOID ALGORITHMS
Volume-Optimal Outer and Inner Ellipsoids
Ergodic Behaviour of the Outer-Ellisoid Algorithm
STEEPEST DESCENT ALGORITHM
Attraction to a Two-Dimensional Plane
Stability of Attractors
Rate of Convergence
Steepest Descent with Relaxation
Appendix
Entropies
Ergodic Theory
Section-Invariant Numbers
References
Author Index
Subject Index
by "Nielsen BookData"