Computational Mathematics, Algorithms, and Data Processing

Computational Mathematics, Algorithms, and Data Processing
Title Computational Mathematics, Algorithms, and Data Processing PDF eBook
Author Daniele Mortari
Publisher MDPI
Total Pages 172
Release 2020-12-07
Genre Technology & Engineering
ISBN 3039435914

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“Computational Mathematics, Algorithms, and Data Processing” of MDPI consists of articles on new mathematical tools and numerical methods for computational problems. Topics covered include: numerical stability, interpolation, approximation, complexity, numerical linear algebra, differential equations (ordinary, partial), optimization, integral equations, systems of nonlinear equations, compression or distillation, and active learning.

Computational Mathematics, Algorithms, and Data Processing

Computational Mathematics, Algorithms, and Data Processing
Title Computational Mathematics, Algorithms, and Data Processing PDF eBook
Author Daniele Mortari
Publisher
Total Pages 172
Release 2020
Genre
ISBN 9783039435920

Download Computational Mathematics, Algorithms, and Data Processing Book in PDF, Epub and Kindle

“Computational Mathematics, Algorithms, and Data Processing” of MDPI consists of articles on new mathematical tools and numerical methods for computational problems. Topics covered include: numerical stability, interpolation, approximation, complexity, numerical linear algebra, differential equations (ordinary, partial), optimization, integral equations, systems of nonlinear equations, compression or distillation, and active learning.

Computational Mathematics, Modelling and Algorithms

Computational Mathematics, Modelling and Algorithms
Title Computational Mathematics, Modelling and Algorithms PDF eBook
Author J. C. Misra
Publisher Alpha Science Int'l Ltd.
Total Pages 540
Release 2003
Genre Computers
ISBN 9788173194900

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This comprehensive volume introduces educational units dealing with important topics in Mathematics, Modelling and Algorithms. Key Features: Illustrative examples and exercises Comprehensive bibliography

Computational Complexity and Feasibility of Data Processing and Interval Computations

Computational Complexity and Feasibility of Data Processing and Interval Computations
Title Computational Complexity and Feasibility of Data Processing and Interval Computations PDF eBook
Author V. Kreinovich
Publisher Springer Science & Business Media
Total Pages 460
Release 2013-06-29
Genre Mathematics
ISBN 1475727933

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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.

Advances On Computer Mathematics And Its Applications

Advances On Computer Mathematics And Its Applications
Title Advances On Computer Mathematics And Its Applications PDF eBook
Author Lipitakis Elias A
Publisher World Scientific Publishing Company
Total Pages 384
Release 1993-11-19
Genre Computers
ISBN 9813230649

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This volume contains selected papers of the proceedings of the first Hellenic Conference on Mathematics and Informatics (HERMIS '92). The main theme for HERMIS '92 Conference was Computer Mathematics, with special emphasis on Computational Mathematics, Operational Research and Statistics, and Mathematics in Economic Science. The presented papers of the HERMIS Conference have been classified into the following technical sessions: Numerical solution of Differential Equations, Parallel Processing and Parallel Algorithms, Optimization and Approximation, Algorithms in Operational Research and Control Theory, Statistical Methods and Analysis, Mathematics in Economic Science, Artificial Intelligence and Data Bases Technology.In addition, a number of selected research articles published recently in the Hellenic Mathematical Society Bulletin in the form of special issues on Computer Mathematics (Volumes 31 and 32) are also included.

An Introduction to Functional Analysis in Computational Mathematics

An Introduction to Functional Analysis in Computational Mathematics
Title An Introduction to Functional Analysis in Computational Mathematics PDF eBook
Author V.I. Lebedev
Publisher Springer Science & Business Media
Total Pages 261
Release 2012-12-06
Genre Mathematics
ISBN 1461241286

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The book contains the methods and bases of functional analysis that are directly adjacent to the problems of numerical mathematics and its applications; they are what one needs for the understand ing from a general viewpoint of ideas and methods of computational mathematics and of optimization problems for numerical algorithms. Functional analysis in mathematics is now just the small visible part of the iceberg. Its relief and summit were formed under the influence of this author's personal experience and tastes. This edition in English contains some additions and changes as compared to the second edition in Russian; discovered errors and misprints had been corrected again here; to the author's distress, they jump incomprehensibly from one edition to another as fleas. The list of literature is far from being complete; just a number of textbooks and monographs published in Russian have been included. The author is grateful to S. Gerasimova for her help and patience in the complex process of typing the mathematical manuscript while the author corrected, rearranged, supplemented, simplified, general ized, and improved as it seemed to him the book's contents. The author thanks G. Kontarev for the difficult job of translation and V. Klyachin for the excellent figures.

Computational Probability

Computational Probability
Title Computational Probability PDF eBook
Author John H. Drew
Publisher Springer
Total Pages 336
Release 2016-12-15
Genre Business & Economics
ISBN 3319433237

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This new edition includes the latest advances and developments in computational probability involving A Probability Programming Language (APPL). The book examines and presents, in a systematic manner, computational probability methods that encompass data structures and algorithms. The developed techniques address problems that require exact probability calculations, many of which have been considered intractable in the past. The book addresses the plight of the probabilist by providing algorithms to perform calculations associated with random variables. Computational Probability: Algorithms and Applications in the Mathematical Sciences, 2nd Edition begins with an introductory chapter that contains short examples involving the elementary use of APPL. Chapter 2 reviews the Maple data structures and functions necessary to implement APPL. This is followed by a discussion of the development of the data structures and algorithms (Chapters 3–6 for continuous random variables and Chapters 7–9 for discrete random variables) used in APPL. The book concludes with Chapters 10–15 introducing a sampling of various applications in the mathematical sciences. This book should appeal to researchers in the mathematical sciences with an interest in applied probability and instructors using the book for a special topics course in computational probability taught in a mathematics, statistics, operations research, management science, or industrial engineering department.