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Complexity theory has become an increasingly important theme in
mathematical research. This book deals with an approximate solution
of differential or integral equations by algorithms using
incomplete information. This situation often arises for equations
of the form Lu = f where f is some function defined on a domain and
L is a differential operator. We do not have complete information
about f. For instance, we might only know its value at a finite
number of points in the domain, or the values of its inner products
with a finite set of known functions. Consequently the best that
can be hoped for is to solve the equation to within a given
accuracy at minimal cost or complexity. In this book, the theory of
the complexity of the solution to differential and integral
equations is developed. The relationship between the worst case
setting and other (sometimes more tractable) related settings, such
as the average case, probabilistic, asymptotic, and randomized
settings, is also discussed. The author determines the inherent
complexity of the problem and finds optimal algorithms (in the
sense of having minimal cost). Furthermore, he studies to what
extent standard algorithms (such as finite element methods for
elliptic problems) are optimal. This approach is discussed in depth
in the context of two-point boundary value problems, linear
elliptic partial differential equations, integral equations,
ordinary differential equations, and ill-posed problems. As a
result, this volume should appeal to mathematicians and numerical
analysts working on the approximate solution of differential and
integral equations, as well as to complexity theorists addressing
related questions in this area.
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