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Targeted audience * Specialists in numerical computations,
especially in numerical optimiza tion, who are interested in
designing algorithms with automatie result ver ification, and who
would therefore be interested in knowing how general their
algorithms caIi in principle be. * Mathematicians and computer
scientists who are interested in the theory 0/ computing and
computational complexity, especially computational com plexity of
numerical computations. * Students in applied mathematics and
computer science who are interested in computational complexity of
different numerical methods and in learning general techniques for
estimating this computational complexity. The book is written with
all explanations and definitions added, so that it can be used as a
graduate level textbook. What this book .is about Data processing.
In many real-life situations, we are interested in the value of a
physical quantity y that is diflicult (or even impossible) to
measure directly. For example, it is impossible to directly measure
the amount of oil in an oil field or a distance to a star. Since we
cannot measure such quantities directly, we measure them
indirectly, by measuring some other quantities Xi and using the
known relation between y and Xi'S to reconstruct y. The algorithm
that transforms the results Xi of measuring Xi into an estimate fj
for y is called data processing.
Primary Audience for the Book * Specialists in numerical
computations who are interested in algorithms with automatic result
verification. * Engineers, scientists, and practitioners who desire
results with automatic verification and who would therefore benefit
from the experience of suc cessful applications. * Students in
applied mathematics and computer science who want to learn these
methods. Goal Of the Book This book contains surveys of
applications of interval computations, i. e. , appli cations of
numerical methods with automatic result verification, that were pre
sented at an international workshop on the subject in EI Paso,
Texas, February 23-25, 1995. The purpose of this book is to
disseminate detailed and surveyed information about existing and
potential applications of this new growing field. Brief Description
of the Papers At the most fundamental level, interval arithmetic
operations work with sets: The result of a single arithmetic
operation is the set of all possible results as the operands range
over the domain. For example, [0. 9,1. 1] + [2. 9,3. 1] = [3. 8,4.
2], where [3. 8,4. 2] = {x + ylx E [0. 9,1. 1] and y E [3. 8,4.
2]}. The power of interval arithmetic comes from the fact that (i)
the elementary operations and standard functions can be computed
for intervals with formulas and subroutines; and (ii) directed
roundings can be used, so that the images of these operations (e.
g.
This volume is intended to be used as a textbook for a special
topic course in computer science. It addresses contemporary
research topics of interest such as intelligent control, genetic
algorithms, neural networks, optimization techniques, expert
systems, fractals, and computer vision. The work incorporates many
new research ideas, and focuses on the role of continuous
mathematics. Audience: This book will be valuable to graduate
students interested in theoretical computer topics, algorithms,
expert systems, neural networks, and software engineering.
After the pioneering works by Robbins {1944, 1945) and Choquet
(1955), the notation of a set-valued random variable (called a
random closed set in literatures) was systematically introduced by
Kendall {1974) and Matheron {1975). It is well known that the
theory of set-valued random variables is a natural extension of
that of general real-valued random variables or random vectors.
However, owing to the topological structure of the space of closed
sets and special features of set-theoretic operations ( cf. Beer
[27]), set-valued random variables have many special properties.
This gives new meanings for the classical probability theory. As a
result of the development in this area in the past more than 30
years, the theory of set-valued random variables with many
applications has become one of new and active branches in
probability theory. In practice also, we are often faced with
random experiments whose outcomes are not numbers but are expressed
in inexact linguistic terms.
Primary Audience for the Book * Specialists in numerical
computations who are interested in algorithms with automatic result
verification. * Engineers, scientists, and practitioners who desire
results with automatic verification and who would therefore benefit
from the experience of suc cessful applications. * Students in
applied mathematics and computer science who want to learn these
methods. Goal Of the Book This book contains surveys of
applications of interval computations, i. e. , appli cations of
numerical methods with automatic result verification, that were pre
sented at an international workshop on the subject in EI Paso,
Texas, February 23-25, 1995. The purpose of this book is to
disseminate detailed and surveyed information about existing and
potential applications of this new growing field. Brief Description
of the Papers At the most fundamental level, interval arithmetic
operations work with sets: The result of a single arithmetic
operation is the set of all possible results as the operands range
over the domain. For example, [0. 9,1. 1] + [2. 9,3. 1] = [3. 8,4.
2], where [3. 8,4. 2] = {x + ylx E [0. 9,1. 1] and y E [3. 8,4.
2]}. The power of interval arithmetic comes from the fact that (i)
the elementary operations and standard functions can be computed
for intervals with formulas and subroutines; and (ii) directed
roundings can be used, so that the images of these operations (e.
g.
After the pioneering works by Robbins {1944, 1945) and Choquet
(1955), the notation of a set-valued random variable (called a
random closed set in literatures) was systematically introduced by
Kendall {1974) and Matheron {1975). It is well known that the
theory of set-valued random variables is a natural extension of
that of general real-valued random variables or random vectors.
However, owing to the topological structure of the space of closed
sets and special features of set-theoretic operations ( cf. Beer
[27]), set-valued random variables have many special properties.
This gives new meanings for the classical probability theory. As a
result of the development in this area in the past more than 30
years, the theory of set-valued random variables with many
applications has become one of new and active branches in
probability theory. In practice also, we are often faced with
random experiments whose outcomes are not numbers but are expressed
in inexact linguistic terms.
Targeted audience * Specialists in numerical computations,
especially in numerical optimiza tion, who are interested in
designing algorithms with automatie result ver ification, and who
would therefore be interested in knowing how general their
algorithms caIi in principle be. * Mathematicians and computer
scientists who are interested in the theory 0/ computing and
computational complexity, especially computational com plexity of
numerical computations. * Students in applied mathematics and
computer science who are interested in computational complexity of
different numerical methods and in learning general techniques for
estimating this computational complexity. The book is written with
all explanations and definitions added, so that it can be used as a
graduate level textbook. What this book .is about Data processing.
In many real-life situations, we are interested in the value of a
physical quantity y that is diflicult (or even impossible) to
measure directly. For example, it is impossible to directly measure
the amount of oil in an oil field or a distance to a star. Since we
cannot measure such quantities directly, we measure them
indirectly, by measuring some other quantities Xi and using the
known relation between y and Xi'S to reconstruct y. The algorithm
that transforms the results Xi of measuring Xi into an estimate fj
for y is called data processing.
This volume is intended to be used as a textbook for a special
topic course in computer science. It addresses contemporary
research topics of interest such as intelligent control, genetic
algorithms, neural networks, optimization techniques, expert
systems, fractals, and computer vision. The work incorporates many
new research ideas, and focuses on the role of continuous
mathematics. Audience: This book will be valuable to graduate
students interested in theoretical computer topics, algorithms,
expert systems, neural networks, and software engineering.
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