Game-Theoretic Probability : Theory and Applications to Prediction, Science, and Finance.

Game-theoretic probability and finance come of age Glenn Shafer and Vladimir Vovk's Probability and Finance , published in 2001, showed that perfect-information games can be used to define mathematical probability. Based on fifteen years of further research, Game-Theoretic Foundations for Proba...

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Bibliographic Details
Main Author: Shafer, Glenn
Other Authors: Vovk, Vladimir
Format: eBook
Language:English
Published: Newark : John Wiley & Sons, Incorporated, 2019.
Edition:2nd ed.
Subjects:
Online Access:Click for online access

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100 1 |a Shafer, Glenn. 
245 1 0 |a Game-Theoretic Probability :  |b Theory and Applications to Prediction, Science, and Finance. 
250 |a 2nd ed. 
260 |a Newark :  |b John Wiley & Sons, Incorporated,  |c 2019. 
300 |a 1 online resource (483 pages) 
336 |a text  |b txt  |2 rdacontent 
337 |a computer  |b c  |2 rdamedia 
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588 0 |a Print version record. 
505 0 |a Cover; Title Page; Copyright; Contents; Preface; Acknowledgments; Part I Examples in Discrete Time; Chapter 1 Borel's Law of Large Numbers; 1.1 A Protocol for Testing Forecasts; 1.2 A Game-Theoretic Generalization of Borel's Theorem; 1.3 Binary Outcomes; 1.4 Slackenings and Supermartingales; 1.5 Calibration; 1.6 The Computation of Strategies; 1.7 Exercises; 1.8 Context; Chapter 2 Bernoulli's and De Moivre's Theorems; 2.1 Game-Theoretic Expected value and Probability; 2.2 Bernoulli's Theorem for Bounded Forecasting; 2.3 A Central Limit Theorem 
505 8 |a 2.4 Global Upper Expected Values for Bounded Forecasting2.5 Exercises; 2.6 Context; Chapter 3 Some Basic Supermartingales; 3.1 Kolmogorov's Martingale; 3.2 Doléans's Supermartingale; 3.3 Hoeffding's Supermartingale; 3.4 Bernstein's Supermartingale; 3.5 Exercises; 3.6 Context; Chapter 4 Kolmogorov's Law of Large Numbers; 4.1 Stating Kolmogorov's Law; 4.2 Supermartingale Convergence Theorem; 4.3 How Skeptic Forces Convergence; 4.4 How Reality Forces Divergence; 4.5 Forcing Games; 4.6 Exercises; 4.7 Context; Chapter 5 The Law of the Iterated Logarithm 
505 8 |a 5.1 Validity of the Iterated-Logarithm Bound5.2 Sharpness of the Iterated-Logarithm Bound; 5.3 Additional Recent Game-Theoretic Results; 5.4 Connections with Large Deviation Inequalities; 5.5 Exercises; 5.6 Context; Part II Abstract Theory in Discrete Time; Chapter 6 Betting on a Single Outcome; 6.1 Upper and Lower Expectations; 6.2 Upper and Lower Probabilities; 6.3 Upper Expectations with Smaller Domains; 6.4 Offers; 6.5 Dropping the Continuity Axiom; 6.6 Exercises; 6.7 Context; Chapter 7 Abstract Testing Protocols; 7.1 Terminology and Notation; 7.2 Supermartingales 
505 8 |a 7.3 Global Upper Expected Values7.4 Lindeberg's Central Limit Theorem for Martingales; 7.5 General Abstract Testing Protocols; 7.6 Making the Results of Part I Abstract; 7.7 Exercises; 7.8 Context; Chapter 8 Zero-One Laws; 8.1 LÉvy's Zero-One Law; 8.2 Global Upper Expectation; 8.3 Global Upper and Lower Probabilities; 8.4 Global Expected Values and Probabilities; 8.5 Other Zero-One Laws; 8.6 Exercises; 8.7 Context; Chapter 9 Relation to Measure-Theoretic Probability; 9.1 VILLE'S THEOREM; 9.2 Measure-Theoretic Representation of Upper Expectations 
505 8 |a 9.3 Embedding Game-Theoretic Martingales in Probability Spaces9.4 Exercises; 9.5 Context; Part III Applications in Discrete Time; Chapter 10 Using Testing Protocols in Science and Technology; 10.1 Signals in Open Protocols; 10.2 Cournot's Principle; 10.3 Daltonism; 10.4 Least Squares; 10.5 Parametric Statistics with Signals; 10.6 Quantum Mechanics; 10.7 Jeffreys's Law; 10.8 Exercises; 10.9 Context; Chapter 11 Calibrating Lookbacks and p-Values; 11.1 Lookback Calibrators; 11.2 Lookback Protocols; 11.3 Lookback Compromises; 11.4 Lookbacks in Financial Markets; 11.5 Calibrating p-values 
500 |a 11.6 Exercises 
520 |a Game-theoretic probability and finance come of age Glenn Shafer and Vladimir Vovk's Probability and Finance , published in 2001, showed that perfect-information games can be used to define mathematical probability. Based on fifteen years of further research, Game-Theoretic Foundations for Probability and Finance presents a mature view of the foundational role game theory can play. Its account of probability theory opens the way to new methods of prediction and testing and makes many statistical methods more transparent and widely usable. Its contributions to finance theory include purely game-theoretic accounts of Ito's stochastic calculus, the capital asset pricing model, the equity premium, and portfolio theory. Game-Theoretic Foundations for Probability and Finance is a book of research. It is also a teaching resource. Each chapter is supplemented with carefully designed exercises and notes relating the new theory to its historical context. Praise from early readers "Ever since Kolmogorov's Grundbegriffe , the standard mathematical treatment of probability theory has been measure-theoretic. In this ground-breaking work, Shafer and Vovk give a game-theoretic foundation instead. While being just as rigorous, the game-theoretic approach allows for vast and useful generalizations of classical measure-theoretic results, while also giving rise to new, radical ideas for prediction, statistics and mathematical finance without stochastic assumptions. The authors set out their theory in great detail, resulting in what is definitely one of the most important books on the foundations of probability to have appeared in the last few decades." - Peter Grünwald, CWI and University of Leiden "Shafer and Vovk have thoroughly re-written their 2001 book on the game-theoretic foundations for probability and for finance. They have included an account of the tremendous growth that has occurred since, in the game-theoretic and pathwise approaches to stochastic analysis and in their applications to continuous-time finance. This new book will undoubtedly spur a better understanding of the foundations of these very important fields, and we should all be grateful to its authors." - Ioannis Karatzas, Columbia University. 
650 0 |a Finance  |x Statistical methods. 
650 0 |a Finance  |x Mathematical models. 
650 0 |a Game theory. 
650 7 |a Finance  |x Mathematical models  |2 fast 
650 7 |a Finance  |x Statistical methods  |2 fast 
650 7 |a Game theory  |2 fast 
700 1 |a Vovk, Vladimir. 
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