Research on interior-point methods (IPMs) has dominated the
field of mathematical programming for the last two decades. Two
contrasting approaches in the analysis and implementation of IPMs
are the so-called small-update and large-update methods, although,
until now, there has been a notorious gap between the theory and
practical performance of these two strategies. This book comes
close to bridging that gap, presenting a new framework for the
theory of primal-dual IPMs based on the notion of the
self-regularity of a function.
The authors deal with linear optimization, nonlinear
complementarity problems, semidefinite optimization, and
second-order conic optimization problems. The framework also covers
large classes of linear complementarity problems and convex
optimization. The algorithm considered can be interpreted as a
path-following method or a potential reduction method. Starting
from a primal-dual strictly feasible point, the algorithm chooses a
search direction defined by some Newton-type system derived from
the self-regular proximity. The iterate is then updated, with the
iterates staying in a certain neighborhood of the central path
until an approximate solution to the problem is found. By
extensively exploring some intriguing properties of self-regular
functions, the authors establish that the complexity of
large-update IPMs can come arbitrarily close to the best known
iteration bounds of IPMs.
Researchers and postgraduate students in all areas of linear and
nonlinear optimization will find this book an important and
invaluable aid to their work.
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