Explorations in Monte Carlo Methods: Undergraduate Texts in Mathematics
Autor Ronald W. Shonkwiler, Franklin Mendivilen Limba Engleză Hardback – 15 iun 2024
This text is for students of engineering, science, economics and mathematics who want to learn about Monte Carlo methods but have only a passing acquaintance with probability theory. The probability needed to understand the material is developed within the text itself in a direct manner using Monte Carlo experiments for reinforcement. There is a prerequisite of at least one year of calculus and a semester of matrix algebra.
Each new idea is carefully motivated by a realistic problem, thus leading to insights into probability theory via examples and numerical simulations. Programming exercises are integrated throughout the text as the primary vehicle for learning the material. All examples in the text are coded in Python as a representative language; the logic is sufficiently clear so as to be easily translated into any other language. Further, Python scripts for each worked example are freely accessible for each chapter. Along the way, most of the basic theory of probability is developed in order to illuminate the solutions to the questions posed. One of the strongest features of the book is the wealth of completely solved example problems. These provide the reader with a sourcebook to follow towards the solution of their own computational problems. Each chapter ends with a large collection of homework problems illustrating and directing the material.
This book is suitable as a textbook for students of engineering, finance, and the sciences as well as mathematics. The problem-oriented approach makes it ideal for an applied course in basic probability as well as for a more specialized course in Monte Carlo Methods. Topics include probability distributions, probability calculations, sampling, counting combinatorial objects, Markov chains, random walks, simulated annealing, genetic algorithms, option pricing, gamblers ruin, statistical mechanics, random number generation, Bayesian Inference, Gibbs Sampling and Monte Carlo integration.
Toate formatele și edițiile | Preț | Express |
---|---|---|
Paperback (1) | 412.03 lei 6-8 săpt. | |
Springer – 30 oct 2014 | 412.03 lei 6-8 săpt. | |
Hardback (2) | 418.94 lei 6-8 săpt. | |
Springer – 21 aug 2009 | 418.94 lei 6-8 săpt. | |
Springer Nature Switzerland – 15 iun 2024 | 469.38 lei 6-8 săpt. |
Din seria Undergraduate Texts in Mathematics
- Preț: 402.33 lei
- 17% Preț: 365.42 lei
- Preț: 426.58 lei
- Preț: 380.26 lei
- Preț: 351.54 lei
- Preț: 358.10 lei
- 13% Preț: 389.61 lei
- Preț: 257.71 lei
- 17% Preț: 395.93 lei
- Preț: 367.40 lei
- Preț: 359.48 lei
- Preț: 304.91 lei
- Preț: 370.77 lei
- 19% Preț: 400.52 lei
- Preț: 364.40 lei
- Preț: 388.49 lei
- Preț: 430.01 lei
- Preț: 398.77 lei
- Preț: 405.41 lei
- Preț: 290.80 lei
- 15% Preț: 417.73 lei
- Preț: 415.94 lei
- Preț: 298.00 lei
- 17% Preț: 362.67 lei
- Preț: 407.62 lei
- 17% Preț: 368.60 lei
- 17% Preț: 367.24 lei
- Preț: 424.14 lei
- 17% Preț: 373.59 lei
- Preț: 400.42 lei
- Preț: 432.63 lei
- Preț: 400.42 lei
- Preț: 329.94 lei
- 19% Preț: 492.82 lei
- Preț: 389.60 lei
- Preț: 383.57 lei
- 15% Preț: 512.28 lei
- Preț: 395.27 lei
- 15% Preț: 522.80 lei
- 15% Preț: 440.30 lei
- 15% Preț: 524.58 lei
- Preț: 383.57 lei
- 15% Preț: 565.74 lei
- 15% Preț: 454.15 lei
- Preț: 385.06 lei
- 15% Preț: 442.89 lei
Preț: 469.38 lei
Preț vechi: 552.22 lei
-15% Nou
Puncte Express: 704
Preț estimativ în valută:
89.87€ • 93.58$ • 74.57£
89.87€ • 93.58$ • 74.57£
Carte tipărită la comandă
Livrare economică 14-28 februarie
Preluare comenzi: 021 569.72.76
Specificații
ISBN-13: 9783031559631
ISBN-10: 3031559630
Ilustrații: XV, 280 p. 92 illus., 28 illus. in color. With online files/update.
Dimensiuni: 155 x 235 mm
Greutate: 0.59 kg
Ediția:Second Edition 2024
Editura: Springer Nature Switzerland
Colecția Springer
Seria Undergraduate Texts in Mathematics
Locul publicării:Cham, Switzerland
ISBN-10: 3031559630
Ilustrații: XV, 280 p. 92 illus., 28 illus. in color. With online files/update.
Dimensiuni: 155 x 235 mm
Greutate: 0.59 kg
Ediția:Second Edition 2024
Editura: Springer Nature Switzerland
Colecția Springer
Seria Undergraduate Texts in Mathematics
Locul publicării:Cham, Switzerland
Cuprins
1. Introduction to Monte Carlo Methods.- 2. Some Probability Distributions and Their Uses.- 3. Markov Chain Monte Carlo.- 4. Random Walks.- 5. Optimization by Monte Carlo Methods.- 6. More on Markov Chain Monte Carlo.- A. Generating Uniform Random Numbers.- B. Perron Frobenius Theorem.- C. Kelly Allocation for Correlated Investments.- D. Donsker's Theorem.- E. Projects.- References.- List of Notation.- Code Index.
Notă biografică
Ronald W. Shonkwiler is professor emeritus at Georgia Institute of Technology School of Mathematics. He received his PhD in 1970. His areas of expertise include: stochastic optimization, computer simulation, Monte Carlo numerical methods, mathematical biology, and reproducing Kernel Hilbert spaces.
Franklin Mendivil is a professor at Acadia University in Nova Scotia. He received his BSCE in Civil Engineering and his PhD in 1996 at Georgia Institute of Technology. In addition to the first edition of this text, Professor Mendivil co-authored "Fractal-Based Methods in Analysis" 2012.
Franklin Mendivil is a professor at Acadia University in Nova Scotia. He received his BSCE in Civil Engineering and his PhD in 1996 at Georgia Institute of Technology. In addition to the first edition of this text, Professor Mendivil co-authored "Fractal-Based Methods in Analysis" 2012.
Textul de pe ultima copertă
Monte Carlo Methods are among the most used, and useful, computational tools available today. They provide efficient and practical algorithms to solve a wide range of scientific and engineering problems in dozens of areas many of which are covered in this text. These include simulation, optimization, finance, statistical mechanics, birth and death processes, Bayesian inference, quadrature, gambling systems and more.
This text is for students of engineering, science, economics and mathematics who want to learn about Monte Carlo methods but have only a passing acquaintance with probability theory. The probability needed to understand the material is developed within the text itself in a direct manner using Monte Carlo experiments for reinforcement. There is a prerequisite of at least one year of calculus and a semester of matrix algebra.
Each new idea is carefully motivated by a realistic problem, thus leading to insights into probability theory via examples and numerical simulations. Programming exercises are integrated throughout the text as the primary vehicle for learning the material. All examples in the text are coded in Python as a representative language; the logic is sufficiently clear so as to be easily translated into any other language. Further, Python scripts for each worked example are freely accessible for each chapter. Along the way, most of the basic theory of probability is developed in order to illuminate the solutions to the questions posed. One of the strongest features of the book is the wealth of completely solved example problems. These provide the reader with a sourcebook to follow towards the solution of their own computational problems. Each chapter ends with a large collection of homework problems illustrating and directing the material.
This book is suitable as a textbook for students of engineering, finance, and the sciences as well as mathematics. The problem-oriented approach makes it ideal for an applied course in basic probability as well as for a more specialized course in Monte Carlo Methods. Topics include probability distributions, probability calculations, sampling, counting combinatorial objects, Markov chains, random walks, simulated annealing, genetic algorithms, option pricing, gamblers ruin, statistical mechanics, random number generation, Bayesian Inference, Gibbs Sampling and Monte Carlo integration.
This text is for students of engineering, science, economics and mathematics who want to learn about Monte Carlo methods but have only a passing acquaintance with probability theory. The probability needed to understand the material is developed within the text itself in a direct manner using Monte Carlo experiments for reinforcement. There is a prerequisite of at least one year of calculus and a semester of matrix algebra.
Each new idea is carefully motivated by a realistic problem, thus leading to insights into probability theory via examples and numerical simulations. Programming exercises are integrated throughout the text as the primary vehicle for learning the material. All examples in the text are coded in Python as a representative language; the logic is sufficiently clear so as to be easily translated into any other language. Further, Python scripts for each worked example are freely accessible for each chapter. Along the way, most of the basic theory of probability is developed in order to illuminate the solutions to the questions posed. One of the strongest features of the book is the wealth of completely solved example problems. These provide the reader with a sourcebook to follow towards the solution of their own computational problems. Each chapter ends with a large collection of homework problems illustrating and directing the material.
This book is suitable as a textbook for students of engineering, finance, and the sciences as well as mathematics. The problem-oriented approach makes it ideal for an applied course in basic probability as well as for a more specialized course in Monte Carlo Methods. Topics include probability distributions, probability calculations, sampling, counting combinatorial objects, Markov chains, random walks, simulated annealing, genetic algorithms, option pricing, gamblers ruin, statistical mechanics, random number generation, Bayesian Inference, Gibbs Sampling and Monte Carlo integration.
Caracteristici
Programming exercises are integrated throughout the text as the primary vehicle for learning the material Hands-on approach is used via realistic problems demonstrated with examples and (Python) numerical simulations sn.pub/extras
Recenzii
From the reviews:
"Explorations in Monte Carlo Methods by Ronald Shonkwiler and Franklin Mendivil is an undergraduate text that is both practical and accessible. … Explorations would make a good text book and would also be suitable for independent study. … It gives numerous applications of Monte Carlo methods including applications in electrical engineering, finance, optimization, and statistical mechanics. Each chapter has numerous exercises and the book concludes with an appendix listing several ideas for student projects applying Monte Carlo methods." (John D. Cook, The Mathematical Association of America, October, 2009)
“This undergraduate text explores the world of Monte Carlo methods under two premises: it shall be algorithmically oriented, and the students shall have fun with the subject. … At the end of each chapter there are … references, and more importantly, a large number of problems … . The problems are clearly pointed out, and hence it is really fun to follow the text. There are not many undergraduate texts on Monte Carlo methods; this is one to recommend for use in a classroom.” (Peter Mathé, Mathematical Reviews, Issue 2010 i)
“This clearly presented, easy-to-understand book offers beginners a hands-on approach to Monte Carlo methods (MCM). These extensively used methods offer valuable computational tools together with very useful, efficient, and practical algorithms for resolving difficult, complex problems confronting researchers/investigators in numerous disciplines. Shonkwiler (emer., Georgia Institute of Technology) and Mendivil (Acadia Univ., Canada) present the material in five chapters, each ending with a carefully selected list of problems. … Summing Up: Highly recommended. Academic libraries serving upper-division undergraduates; professionals/practitioners.” (D. V. Chopra, Choice, Vol. 47 (7), March, 2010)
"Explorations in Monte Carlo Methods by Ronald Shonkwiler and Franklin Mendivil is an undergraduate text that is both practical and accessible. … Explorations would make a good text book and would also be suitable for independent study. … It gives numerous applications of Monte Carlo methods including applications in electrical engineering, finance, optimization, and statistical mechanics. Each chapter has numerous exercises and the book concludes with an appendix listing several ideas for student projects applying Monte Carlo methods." (John D. Cook, The Mathematical Association of America, October, 2009)
“This undergraduate text explores the world of Monte Carlo methods under two premises: it shall be algorithmically oriented, and the students shall have fun with the subject. … At the end of each chapter there are … references, and more importantly, a large number of problems … . The problems are clearly pointed out, and hence it is really fun to follow the text. There are not many undergraduate texts on Monte Carlo methods; this is one to recommend for use in a classroom.” (Peter Mathé, Mathematical Reviews, Issue 2010 i)
“This clearly presented, easy-to-understand book offers beginners a hands-on approach to Monte Carlo methods (MCM). These extensively used methods offer valuable computational tools together with very useful, efficient, and practical algorithms for resolving difficult, complex problems confronting researchers/investigators in numerous disciplines. Shonkwiler (emer., Georgia Institute of Technology) and Mendivil (Acadia Univ., Canada) present the material in five chapters, each ending with a carefully selected list of problems. … Summing Up: Highly recommended. Academic libraries serving upper-division undergraduates; professionals/practitioners.” (D. V. Chopra, Choice, Vol. 47 (7), March, 2010)