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This book shows how the Bayesian Approach (BA) improves well known
heuristics by randomizing and optimizing their parameters. That is
the Bayesian Heuristic Approach (BHA). The ten in-depth examples
are designed to teach Operations Research using Internet. Each
example is a simple representation of some impor tant family of
real-life problems. The accompanying software can be run by remote
Internet users. The supporting web-sites include software for Java,
C++, and other lan guages. A theoretical setting is described in
which one can discuss a Bayesian adaptive choice of heuristics for
discrete and global optimization prob lems. The techniques are
evaluated in the spirit of the average rather than the worst case
analysis. In this context, "heuristics" are understood to be an
expert opinion defining how to solve a family of problems of dis
crete or global optimization. The term "Bayesian Heuristic
Approach" means that one defines a set of heuristics and fixes some
prior distribu tion on the results obtained. By applying BHA one is
looking for the heuristic that reduces the average deviation from
the global optimum. The theoretical discussions serve as an
introduction to examples that are the main part of the book. All
the examples are interconnected. Dif ferent examples illustrate
different points of the general subject. How ever, one can consider
each example separately, too."
Bayesian decision theory is known to provide an effective framework
for the practical solution of discrete and nonconvex optimization
problems. This book is the first to demonstrate that this framework
is also well suited for the exploitation of heuristic methods in
the solution of such problems, especially those of large scale for
which exact optimization approaches can be prohibitively costly.
The book covers all aspects ranging from the formal presentation of
the Bayesian Approach, to its extension to the Bayesian Heuristic
Strategy, and its utilization within the informal, interactive
Dynamic Visualization strategy. The developed framework is applied
in forecasting, in neural network optimization, and in a large
number of discrete and continuous optimization problems. Specific
application areas which are discussed include scheduling and
visualization problems in chemical engineering, manufacturing
process control, and epidemiology. Computational results and
comparisons with a broad range of test examples are presented. The
software required for implementation of the Bayesian Heuristic
Approach is included. Although some knowledge of mathematical
statistics is necessary in order to fathom the theoretical aspects
of the development, no specialized mathematical knowledge is
required to understand the application of the approach or to
utilize the software which is provided. Audience: The book is of
interest to both researchers in operations research, systems
engineering, and optimization methods, as well as applications
specialists concerned with the solution of large scale discrete
and/or nonconvex optimization problems in a broad range of
engineering and technological fields. It may be used as
supplementary material for graduate level courses.
This book shows how the Bayesian Approach (BA) improves well known
heuristics by randomizing and optimizing their parameters. That is
the Bayesian Heuristic Approach (BHA). The ten in-depth examples
are designed to teach Operations Research using Internet. Each
example is a simple representation of some impor tant family of
real-life problems. The accompanying software can be run by remote
Internet users. The supporting web-sites include software for Java,
C++, and other lan guages. A theoretical setting is described in
which one can discuss a Bayesian adaptive choice of heuristics for
discrete and global optimization prob lems. The techniques are
evaluated in the spirit of the average rather than the worst case
analysis. In this context, "heuristics" are understood to be an
expert opinion defining how to solve a family of problems of dis
crete or global optimization. The term "Bayesian Heuristic
Approach" means that one defines a set of heuristics and fixes some
prior distribu tion on the results obtained. By applying BHA one is
looking for the heuristic that reduces the average deviation from
the global optimum. The theoretical discussions serve as an
introduction to examples that are the main part of the book. All
the examples are interconnected. Dif ferent examples illustrate
different points of the general subject. How ever, one can consider
each example separately, too."
.Et moi, .... si j'avait su comment en revcnir. One service
mathematics has rendered the je o'y semis point alle.' human race.
It has put common sense back Jules Verne where it beloogs. on the
topmost shelf next to the dusty canister labelled 'discarded non
The series is divergent; therefore we may be sense', able to do
something with it. Eric T. BclI O. Heaviside Mathematics is a tool
for thought. A highly necessary tool in a world where both feedback
and non linearities abound. Similarly, all kinds of parts of
mathematics serve as tools for other parts and for other sciences.
Applying a simple rewriting rule to the quote on the right above
one finds such statements as: 'One service topology has rendered
mathematical physics ...'; 'One service logic has rendered com
puter science .. .'; 'One service category theory has rendered
mathematics .. .'. All arguably true. And all statements obtainable
this way form part of the raison d'etre of this series."
Bayesian decision theory is known to provide an effective framework
for the practical solution of discrete and nonconvex optimization
problems. This book is the first to demonstrate that this framework
is also well suited for the exploitation of heuristic methods in
the solution of such problems, especially those of large scale for
which exact optimization approaches can be prohibitively costly.
The book covers all aspects ranging from the formal presentation of
the Bayesian Approach, to its extension to the Bayesian Heuristic
Strategy, and its utilization within the informal, interactive
Dynamic Visualization strategy. The developed framework is applied
in forecasting, in neural network optimization, and in a large
number of discrete and continuous optimization problems. Specific
application areas which are discussed include scheduling and
visualization problems in chemical engineering, manufacturing
process control, and epidemiology. Computational results and
comparisons with a broad range of test examples are presented. The
software required for implementation of the Bayesian Heuristic
Approach is included. Although some knowledge of mathematical
statistics is necessary in order to fathom the theoretical aspects
of the development, no specialized mathematical knowledge is
required to understand the application of the approach or to
utilize the software which is provided. Audience: The book is of
interest to both researchers in operations research, systems
engineering, and optimization methods, as well as applications
specialists concerned with the solution of large scale discrete
and/or nonconvex optimization problems in a broad range of
engineering and technological fields. It may be used as
supplementary material for graduate level courses.
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