Uncertainty Quantification in Variational Inequalities (eBook, PDF)
Theory, Numerics, and Applications
Alle Infos zum eBook verschenken
Uncertainty Quantification in Variational Inequalities (eBook, PDF)
Theory, Numerics, and Applications
- Format: PDF
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung

Hier können Sie sich einloggen

Bitte loggen Sie sich zunächst in Ihr Kundenkonto ein oder registrieren Sie sich bei bücher.de, um das eBook-Abo tolino select nutzen zu können.
Uncertainty Quantification (UQ) is an emerging and extremely active research discipline which aims to quantitatively treat any uncertainty in applied models. The primary objective of Uncertainty Quantification in Variational Inequalities: Theory, Numerics, and Applications is to present a comprehensive treatment of UQ in variational inequalities and some of its generalizations emerging from various network, economic, and engineering models. Some of the developed techniques also apply to machine learning, neural networks, and related fields.
Features
First book on UQ in variational…mehr
- Geräte: PC
- mit Kopierschutz
- eBook Hilfe
- Joachim GwinnerUncertainty Quantification in Variational Inequalities (eBook, ePUB)46,95 €
- Jose Miguel David Baez-LopezMATLAB Handbook with Applications to Mathematics, Science, Engineering, and Finance (eBook, PDF)48,95 €
- Victor Grigor'e GanzhaNumerical Solutions for Partial Differential Equations (eBook, PDF)62,95 €
- Barry CipraMisteaks. . . and how to find them before the teacher does. . . (eBook, PDF)48,95 €
- Numerical Methods and Applications (1994) (eBook, PDF)52,95 €
- Richard F. GunstRegression Analysis and its Application (eBook, PDF)64,95 €
- Eugene FiumeAn Introduction to Scientific, Symbolic, and Graphical Computation (eBook, PDF)91,95 €
-
-
-
Features
- First book on UQ in variational inequalities emerging from various network, economic, and engineering models
- Completely self-contained and lucid in style
- Aimed for a diverse audience including applied mathematicians, engineers, economists, and professionals from academia
- Includes the most recent developments on the subject which so far have only been available in the research literature
Dieser Download kann aus rechtlichen Gründen nur mit Rechnungsadresse in A, B, BG, CY, CZ, D, DK, EW, E, FIN, F, GR, HR, H, IRL, I, LT, L, LR, M, NL, PL, P, R, S, SLO, SK ausgeliefert werden.
- Produktdetails
- Verlag: Taylor & Francis eBooks
- Seitenzahl: 404
- Erscheinungstermin: 24. Dezember 2021
- Englisch
- ISBN-13: 9781351857673
- Artikelnr.: 63104663
- Verlag: Taylor & Francis eBooks
- Seitenzahl: 404
- Erscheinungstermin: 24. Dezember 2021
- Englisch
- ISBN-13: 9781351857673
- Artikelnr.: 63104663
- Herstellerkennzeichnung Die Herstellerinformationen sind derzeit nicht verfügbar.
Baasansuren Jadamba earned her Ph.D. in Applied Mathematics and Scientific Computing from Friedrich-Alexander University Erlangen-Nuremberg (Germany) in 2004, and she is an Associate Professor at the School of Mathematical Sciences at the Rochester Institute of Technology. Her research interests and publications are in the numerical analysis of partial differential equations, finite element methods, parameter identification in partial differential equations, and stochastic equilibrium problems.
Akhtar A. Khan is a Professor at the Rochester Institute of Technology. His research interests include inverse problems, optimal control, variational inequalities, and set-valued optimization. He is a co-author of the monograph Set-valued Optimization: An Introduction with Applications, Springer (2015) and co-editor of Nonlinear Analysis and Variational Problems: In Honor of George Isac, Springer (2009).
Fabio Raciti earned his Ph.D. in Theoretical Physics from the University of Catania (Italy), where he has been an Assistant Professor and then an Associate Professor of Mathematical Analysis. He is currently an Associate Professor of Operations Research at the University of Catania and has received the National (Italian) Habilitation as a Full Professor of Operations Research. He has published research work in the field of variational inequalities, optimization, inverse problems, and stochastic equilibrium problems.
Analysis. 1.2. Fundamentals of Measure Theory and Integration. 1.3.
Essentials of Operator Theory. 1.4. An Overview of Convex Analysis and
Optimization. 1.5. Comments and Bibliographical Notes. 2. Probability.
2.1. Probability Measure. 2.2. Conditional Probability and Independence.
2.3. Random Variables and Expectation. 2.4. Correlation, Independence, and
Conditional Expectation. 2.5. Modes of Convergence of Random Variables.
2.6. Comments and Bibliographical Notes. 3. Projections on Convex Sets.
3.1. Projections on Convex Sets in Hilbert Spaces. 3.2. Projections on
Convex Sets in Banach Spaces. 3.3. Comments and Bibliographical Notes. 4.
Variational and Quasi-Variational Inequalities. 4.1. Illustrative Examples.
4.2. Linear Variational Inequalities. 4.3. Nonlinear Variational
Inequalities. 4.4. Quasi Variational Inequalities. 4.5. Comments and
Bibliographical Notes. 5. Numerical Methods for Variational and
Quasi-Variational Inequalities. 5.1. Projection Methods. 5.2. Extragradient
Methods. 5.3. Gap Functions and Descent Methods. 5.4. The Auxiliary Problem
Principle. 5.5. Relaxation Method for Variational Inequalities. 5.6.
Projection Methods for Quasi-Variational Inequalities. 5.7. Convergence of
Recursive Sequences. 5.8. Comments and Bibliographical Notes. II.
Uncertainty Quantification. Prologue on Uncertainty Quantification. 6. An
Lp Approach for Variational Inequalities with Uncertain Data. 6.1. Linear
Variational Inequalities with Random Data. 6.2. Nonlinear Variational
Inequalities with Random Data. 6.3. Regularization of Variational
Inequalities with Random Data. 6.4. Variational Inequalities with
Mean-value Constraints. 6.5. Comments and Bibliographical Notes. 7.
Expected Residual Minimization. 7.1. ERM for Linear Complementarity
Problems. 7.2. ERM for Nonlinear Complementarity Problems. 7.3. ERM for
Variational Inequalities. 7.4. Comments and Bibliographical Notes. 8.
Stochastic Approximation Approach. 8.1. Stochastic Approximation. An
Overview. 8.2. Gradient and Subgradient Stochastic Approximation. 8.3.
Stochastic Approximation for Variational Inequalities. 8.4. Stochastic
Iterative Regularization. 8.5. Stochastic Extragradient Method. 8.6.
Incremental Projection Method. 8.7. Comments and Bibliographical Notes.
III. Applications. 9. Uncertainty Quantification in Electric Power Markets.
9.1. Introduction. 9.2. The Model. 9.3. Complete Supply Chain Equilibrium
Conditions. 9.4. Numerical Experiments. 9.5. Comments and Bibliographical
Notes. 10. Uncertainty Quantification in Migration Models. 10.1.
Introduction. 10.2. A Simple Model of Population Distributions. 10.3. A
More Refined Model. 10.4. Numerical Examples. 10.5. Comments and
Bibliographical Notes. 11. Uncertainty Quantification in Nash Equilibrium
Problems. 11.1. Introduction. 11.2. Stochastic Nash Games and Variational
Inequalities. 11.3. The Stochastic Oligopoly Model. 11.4. Uncertainty
Quantification in Utility Functions. 11.5. Comments and Bibliographical
Notes. 12. Uncertainty Quantification in Traffic Equilibrium Problems.
12.1 Introduction. 12.2. Traffic Equilibrium Problems via Variational
Inequalities. 12.3. Uncertain Traffic Equilibrium Problems. 12.4.
Computational Results. 12.5. A Comparative Study of Various Approaches.
12.6. Comments and Bibliographical Notes. Epilogue. Bibliography. Index.
Analysis. 1.2. Fundamentals of Measure Theory and Integration. 1.3.
Essentials of Operator Theory. 1.4. An Overview of Convex Analysis and
Optimization. 1.5. Comments and Bibliographical Notes. 2. Probability.
2.1. Probability Measure. 2.2. Conditional Probability and Independence.
2.3. Random Variables and Expectation. 2.4. Correlation, Independence, and
Conditional Expectation. 2.5. Modes of Convergence of Random Variables.
2.6. Comments and Bibliographical Notes. 3. Projections on Convex Sets.
3.1. Projections on Convex Sets in Hilbert Spaces. 3.2. Projections on
Convex Sets in Banach Spaces. 3.3. Comments and Bibliographical Notes. 4.
Variational and Quasi-Variational Inequalities. 4.1. Illustrative Examples.
4.2. Linear Variational Inequalities. 4.3. Nonlinear Variational
Inequalities. 4.4. Quasi Variational Inequalities. 4.5. Comments and
Bibliographical Notes. 5. Numerical Methods for Variational and
Quasi-Variational Inequalities. 5.1. Projection Methods. 5.2. Extragradient
Methods. 5.3. Gap Functions and Descent Methods. 5.4. The Auxiliary Problem
Principle. 5.5. Relaxation Method for Variational Inequalities. 5.6.
Projection Methods for Quasi-Variational Inequalities. 5.7. Convergence of
Recursive Sequences. 5.8. Comments and Bibliographical Notes. II.
Uncertainty Quantification. Prologue on Uncertainty Quantification. 6. An
Lp Approach for Variational Inequalities with Uncertain Data. 6.1. Linear
Variational Inequalities with Random Data. 6.2. Nonlinear Variational
Inequalities with Random Data. 6.3. Regularization of Variational
Inequalities with Random Data. 6.4. Variational Inequalities with
Mean-value Constraints. 6.5. Comments and Bibliographical Notes. 7.
Expected Residual Minimization. 7.1. ERM for Linear Complementarity
Problems. 7.2. ERM for Nonlinear Complementarity Problems. 7.3. ERM for
Variational Inequalities. 7.4. Comments and Bibliographical Notes. 8.
Stochastic Approximation Approach. 8.1. Stochastic Approximation. An
Overview. 8.2. Gradient and Subgradient Stochastic Approximation. 8.3.
Stochastic Approximation for Variational Inequalities. 8.4. Stochastic
Iterative Regularization. 8.5. Stochastic Extragradient Method. 8.6.
Incremental Projection Method. 8.7. Comments and Bibliographical Notes.
III. Applications. 9. Uncertainty Quantification in Electric Power Markets.
9.1. Introduction. 9.2. The Model. 9.3. Complete Supply Chain Equilibrium
Conditions. 9.4. Numerical Experiments. 9.5. Comments and Bibliographical
Notes. 10. Uncertainty Quantification in Migration Models. 10.1.
Introduction. 10.2. A Simple Model of Population Distributions. 10.3. A
More Refined Model. 10.4. Numerical Examples. 10.5. Comments and
Bibliographical Notes. 11. Uncertainty Quantification in Nash Equilibrium
Problems. 11.1. Introduction. 11.2. Stochastic Nash Games and Variational
Inequalities. 11.3. The Stochastic Oligopoly Model. 11.4. Uncertainty
Quantification in Utility Functions. 11.5. Comments and Bibliographical
Notes. 12. Uncertainty Quantification in Traffic Equilibrium Problems.
12.1 Introduction. 12.2. Traffic Equilibrium Problems via Variational
Inequalities. 12.3. Uncertain Traffic Equilibrium Problems. 12.4.
Computational Results. 12.5. A Comparative Study of Various Approaches.
12.6. Comments and Bibliographical Notes. Epilogue. Bibliography. Index.