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In April 2007, the Deutsche Forschungsgemeinschaft (DFG) approved
the Priority Program 1324 "Mathematical Methods for Extracting
Quantifiable Information from Complex Systems." This volume
presents a comprehensive overview of the most important results
obtained over the course of the program. Mathematical models of
complex systems provide the foundation for further technological
developments in science, engineering and computational finance.
Motivated by the trend toward steadily increasing computer power,
ever more realistic models have been developed in recent years.
These models have also become increasingly complex, and their
numerical treatment poses serious challenges. Recent developments
in mathematics suggest that, in the long run, much more powerful
numerical solution strategies could be derived if the
interconnections between the different fields of research were
systematically exploited at a conceptual level. Accordingly, a
deeper understanding of the mathematical foundations as well as the
development of new and efficient numerical algorithms were among
the main goals of this Priority Program. The treatment of
high-dimensional systems is clearly one of the most challenging
tasks in applied mathematics today. Since the problem of
high-dimensionality appears in many fields of application, the
above-mentioned synergy and cross-fertilization effects were
expected to make a great impact. To be truly successful, the
following issues had to be kept in mind: theoretical research and
practical applications had to be developed hand in hand; moreover,
it has proven necessary to combine different fields of mathematics,
such as numerical analysis and computational stochastics. To keep
the whole program sufficiently focused, we concentrated on specific
but related fields of application that share common characteristics
and as such, they allowed us to use closely related approaches.
In April 2007, the Deutsche Forschungsgemeinschaft (DFG) approved
the Priority Program 1324 "Mathematical Methods for Extracting
Quantifiable Information from Complex Systems." This volume
presents a comprehensive overview of the most important results
obtained over the course of the program. Mathematical models of
complex systems provide the foundation for further technological
developments in science, engineering and computational finance.
Motivated by the trend toward steadily increasing computer power,
ever more realistic models have been developed in recent years.
These models have also become increasingly complex, and their
numerical treatment poses serious challenges. Recent developments
in mathematics suggest that, in the long run, much more powerful
numerical solution strategies could be derived if the
interconnections between the different fields of research were
systematically exploited at a conceptual level. Accordingly, a
deeper understanding of the mathematical foundations as well as the
development of new and efficient numerical algorithms were among
the main goals of this Priority Program. The treatment of
high-dimensional systems is clearly one of the most challenging
tasks in applied mathematics today. Since the problem of
high-dimensionality appears in many fields of application, the
above-mentioned synergy and cross-fertilization effects were
expected to make a great impact. To be truly successful, the
following issues had to be kept in mind: theoretical research and
practical applications had to be developed hand in hand; moreover,
it has proven necessary to combine different fields of mathematics,
such as numerical analysis and computational stochastics. To keep
the whole program sufficiently focused, we concentrated on specific
but related fields of application that share common characteristics
and as such, they allowed us to use closely related approaches.
The average-case analysis of numerical problems is the counterpart
of the more traditional worst-case approach. The analysis of
average error and cost leads to new insight on numerical problems
as well as to new algorithms. The book provides a survey of results
that were mainly obtained during the last 10 years and also
contains new results. The problems under consideration include
approximation/optimal recovery and numerical integration of
univariate and multivariate functions as well as zero-finding and
global optimization. Background material, e.g. on reproducing
kernel Hilbert spaces and random fields, is provided.
Der Text gibt eine Einf hrung in die Mathematik und die Anwendungsm
glichkeiten der Monte Carlo-Methoden und verwendet dazu durchg ngig
die Sprache der Stochastik. Der Leser lernt die Grundprinzipien und
wesentlichen Eigenschaften dieser Verfahren kennen und wird dadurch
in den Stand versetzt, dieses wichtige algorithmische Werkzeug
einsetzen und die Ergebnisse statistisch interpretieren zu k nnen.
Anhand ausgew hlter Fragestellungen wird er au erdem an aktuelle
Forschungsfragen in diesem Bereich herangef hrt. Behandelt werden
die direkte Simulation, Methoden zur Simulation von Verteilungen
und stochastischen Prozessen, Varianzreduktion, sowie auf einf
hrendem Niveau Markov Chain Monte Carlo-Methoden und die
hochdimensionale Integration. Es werden Anwendungsbeispiele aus der
Teilchenphysik und der Finanz- und Versicherungsmathematik pr
sentiert, und anhand des Integrationsproblems wird gezeigt, wie
sich die Frage nach optimalen Algorithmen formulieren und in einem
asymptotischen Sinn beantworten l sst.
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