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050 4 |a HG6024.A3 
100 1 |a Iacus, Stefano M. 
245 0 0 |a Option pricing and estimation of financial models with R  |c Stefano M. Iacus 
260 |a Chichester, U.K.  |b J. Wiley & Sons  |c 2011 
300 |a xv, 456 pages  |b illustrations 
505 0 |a 3.15.1 Existence and uniqueness of solutions3.16 Girsanov's theorem for diffusion processes; 3.17 Local martingales and semimartingales; 3.18 Lévy processes; 3.18.1 Lévy-Khintchine formula; 3.18.2 Lévy jumps and random measures; 3.18.3 Itô-Lévy decomposition of a Lévy process; 3.18.4 More on the Lévy measure; 3.18.5 The Itô formula for Lévy processes; 3.18.6 Lévy processes and martingales; 3.18.7 Stochastic differential equations with jumps; 3.18.8 Itô formula for Lévy driven stochastic differential equations; 3.19 Stochastic differential equations in Rn; 3.20 Markov switching diffusions 
505 0 |a 3.7.2 Brownian motion is a martingale3.7.3 Brownian motion and partial differential equations; 3.8 Counting and marked processes; 3.9 Poisson process; 3.10 Compound Poisson process; 3.11 Compensated Poisson processes; 3.12 Telegraph process; 3.12.1 Telegraph process and partial differential equations; 3.12.2 Moments of the telegraph process; 3.12.3 Telegraph process and Brownian motion; 3.13 Stochastic integrals; 3.13.1 Properties of the stochastic integral; 3.13.2 Itô formula; 3.14 More properties and inequalities for the Itô integral; 3.15 Stochastic differential equations 
505 0 |a Includes bibliographical references and index 
505 0 |a Option Pricing and Estimation of Financial Models with R; Contents; Preface; 1 A synthetic view; 1.1 The world of derivatives; 1.1.1 Different kinds of contracts; 1.1.2 Vanilla options; 1.1.3 Why options?; 1.1.4 A variety of options; 1.1.5 How to model asset prices; 1.1.6 One step beyond; 1.2 Bibliographical notes; References; 2 Probability, random variables and statistics; 2.1 Probability; 2.1.1 Conditional probability; 2.2 Bayes' rule; 2.3 Random variables; 2.3.1 Characteristic function; 2.3.2 Moment generating function; 2.3.3 Examples of random variables; 2.3.4 Sum of random variables 
505 0 |a 2.8 Bibliographical notesReferences; 3 Stochastic processes; 3.1 Definition and first properties; 3.1.1 Measurability and filtrations; 3.1.2 Simple and quadratic variation of a process; 3.1.3 Moments, covariance, and increments of stochastic processes; 3.2 Martingales; 3.2.1 Examples of martingales; 3.2.2 Inequalities for martingales; 3.3 Stopping times; 3.4 Markov property; 3.4.1 Discrete time Markov chains; 3.4.2 Continuous time Markov processes; 3.4.3 Continuous time Markov chains; 3.5 Mixing property; 3.6 Stable convergence; 3.7 Brownian motion; 3.7.1 Brownian motion and random walks 
653 |a R (Langage de programmation) 
653 |a Options (Finance) / Prices / Mathematical models / fast 
653 |a Stochastic processes / Mathematical models 
653 |a Time-series analysis / Mathematical models / fast 
653 |a Probabilities / Mathematical models 
653 |a R (Computer program language) / fast 
653 |a Stochastic processes / Mathematical models / fast 
653 |a Probabilités / Modèles mathématiques 
653 |a Processus stochastiques / Modèles mathématiques 
653 |a Série chronologique / Modèles mathématiques 
653 |a Options (Finances) / Prix / Modèles mathématiques 
653 |a Probabilities / Mathematical models / fast 
653 |a R (Computer program language) / http://id.loc.gov/authorities/subjects/sh2002004407 
653 |a Options (Finance) / Prices / Mathematical models 
653 |a Time-series analysis / Mathematical models 
041 0 7 |a eng  |2 ISO 639-2 
989 |b OREILLY  |a O'Reilly 
776 |z 0470745843 
776 |z 9780470745847 
776 |z 9781119990086 
856 4 0 |u https://learning.oreilly.com/library/view/~/9781119990208/?ar  |x Verlag  |3 Volltext 
082 0 |a 519.2 
082 0 |a 332.64/53 
082 0 |a 332 
520 |a "Presents inference and simulation of stochastic process in the field of model calibration for financial times series modeled with continuous time processes and numerical option pricing. Introduces the basis of probability theory and goes on to explain how to model financial times series with continuous models, how to calibrate them and covers option pricing with one or more underlying assets based on these models. Analysis and implementation of models based on switching models or models with jumps are featured along with new models (Levy and telegraph process modeling) and topics such as; volatilty, covariation, p-variation and regime switching analysis, attention is focused on the calibration of these topics from a statistical viewpoint. The book features problems with solutions and examples. All the examples and R code are available as an additional R package, therefore all the examples can be reproduced"--