Skip to main content

2018 | Buch

Simulation and Inference for Stochastic Processes with YUIMA

A Comprehensive R Framework for SDEs and Other Stochastic Processes

insite
SUCHEN

Über dieses Buch

The YUIMA package is the first comprehensive R framework based on S4 classes and methods which allows for the simulation of stochastic differential equations driven by Wiener process, Lévy processes or fractional Brownian motion, as well as CARMA, COGARCH, and Point processes. The package performs various central statistical analyses such as quasi maximum likelihood estimation, adaptive Bayes estimation, structural change point analysis, hypotheses testing, asynchronous covariance estimation, lead-lag estimation, LASSO model selection, and so on. YUIMA also supports stochastic numerical analysis by fast computation of the expected value of functionals of stochastic processes through automatic asymptotic expansion by means of the Malliavin calculus. All models can be multidimensional, multiparametric or non parametric.The book explains briefly the underlying theory for simulation and inference of several classes of stochastic processes and then presents both simulation experiments and applications to real data. Although these processes have been originally proposed in physics and more recently in finance, they are becoming popular also in biology due to the fact the time course experimental data are now available. The YUIMA package, available on CRAN, can be freely downloaded and this companion book will make the user able to start his or her analysis from the first page.

Inhaltsverzeichnis

Frontmatter

The Yuima Framework

Frontmatter
Chapter 1. The YUIMA Package
Abstract
This chapter introduces the YUIMA Project and the corresponding R package. A detailed overview of the main functionalities of the package is presented, and the structure of the new S4 classes and methods introduced by yuima package are also described. These classes are designed for simulation and inference of wide classes of stochastic processes. A section is dedicated to input and output of time series and handling of time stamps.
Stefano M. Iacus, Nakahiro Yoshida

Models and Inference

Frontmatter
Chapter 2. Diffusion Processes
Abstract
This chapter presents elements of statistical inference and simulation for diffusion processes defined by stochastic differential equations. Many well-known models are treated in detail like geometric Brownian motion, CIR, CEV, Vasicek, CKLS, Heston models. The chapter considers other topics such as quasi-maximum likelihood estimation, Bayesian estimation, hypotheses testing, model selection, lasso estimation, change point analysis, asynchronous covariance estimation, lead–lag analysis and asymptotic expansion. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Chapter 3. Compound Poisson Processes
Abstract
This chapter reviews the basic facts about the simulation and inference for compound Poisson processes. Univariate and multivariate models are considered in full details. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Chapter 4. Stochastic Differential Equations Driven by Lévy Processes
Abstract
This chapter presents stochastic differential equations driven by Lévy processes. After an introduction to the main properties of Lévy processes and their measures, a detailed exposition of the most important models like NIG, IG, variance gamma, etc, are introduced. Simulation schemes and estimation for exponential Lévy models and diffusion processes with compound Poisson jumps are considered with examples. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Chapter 5. Stochastic Differential Equations Driven by the Fractional Brownian Motion
Abstract
This chapter, after introducing the fractional Brownian motion and its properties, considers the problem of stochastic differential equations driven by fractional Gaussian noise. Estimation for such linear models is also treated in full details with real data fitting. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Chapter 6. CARMA Models
Abstract
This chapter introduces the Continuous ARMA models, i.e. CARMA(p,q), as a generalization of the ARMA time series when the time is continuous and the innovation follow a wide range of Lévy processes. Simulation and inference for this model is considered along with the fitting of real data to this model. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Chapter 7. COGARCH Models
Abstract
This chapter introduces the continuous GARCH models, namely COGARCH(p, q). These models are a generalization of the conditional heteroscedasticity GARCH time series models where the time is continuous and the innovation follows a Lévy process. Simulation and inference for this model are considered as well as the fit of COGARCH to real data. Full R code for completing the above analyses with yuima package is provided.
Stefano M. Iacus, Nakahiro Yoshida
Backmatter
Metadaten
Titel
Simulation and Inference for Stochastic Processes with YUIMA
verfasst von
Stefano M. Iacus
Nakahiro Yoshida
Copyright-Jahr
2018
Electronic ISBN
978-3-319-55569-0
Print ISBN
978-3-319-55567-6
DOI
https://doi.org/10.1007/978-3-319-55569-0

Premium Partner