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Statistical Modeling using Local Gaussian Approximation extends
powerful characteristics of the Gaussian distribution, perhaps, the
most well-known and most used distribution in statistics, to a
large class of non-Gaussian and nonlinear situations through local
approximation. This extension enables the reader to follow new
methods in assessing dependence and conditional dependence, in
estimating probability and spectral density functions, and in
discrimination. Chapters in this release cover Parametric,
nonparametric, locally parametric, Dependence, Local Gaussian
correlation and dependence, Local Gaussian correlation and the
copula, Applications in finance, and more. Additional chapters
explores Measuring dependence and testing for independence, Time
series dependence and spectral analysis, Multivariate density
estimation, Conditional density estimation, The local Gaussian
partial correlation, Regression and conditional regression
quantiles, and a A local Gaussian Fisher discriminant.
This book contains an extensive up-to-date overview of nonlinear
time series models and their application to modelling economic
relationships. It considers nonlinear models in stationary and
nonstationary frameworks, and both parametric and nonparametric
models are discussed. The book contains examples of nonlinear
models in economic theory and presents the most common nonlinear
time series models. Importantly, it shows the reader how to apply
these models in practice. For this purpose, the building of various
nonlinear models with its three stages of model building:
specification, estimation and evaluation, is discussed in detail
and is illustrated by several examples involving both economic and
non-economic data. Since estimation of nonlinear time series models
is carried out using numerical algorithms, the book contains a
chapter on estimating parametric nonlinear models and another on
estimating nonparametric ones.
Forecasting is a major reason for building time series models,
linear or nonlinear. The book contains a discussion on forecasting
with nonlinear models, both parametric and nonparametric, and
considers numerical techniques necessary for computing multi-period
forecasts from them. The main focus of the book is on models of the
conditional mean, but models of the conditional variance, mainly
those of autoregressive conditional heteroskedasticity, receive
attention as well. A separate chapter is devoted to state space
models. As a whole, the book is an indispensable tool for
researchers interested in nonlinear time series and is also
suitable for teaching courses in econometrics and time series
analysis.
This book contains an extensive up-to-date overview of nonlinear
time series models and their application to modelling economic
relationships. It considers nonlinear models in stationary and
nonstationary frameworks, and both parametric and nonparametric
models are discussed. The book contains examples of nonlinear
models in economic theory and presents the most common nonlinear
time series models. Importantly, it shows the reader how to apply
these models in practice. For this purpose, the building of various
nonlinear models with its three stages of model building:
specification, estimation and evaluation, is discussed in detail
and is illustrated by several examples involving both economic and
non-economic data. Since estimation of nonlinear time series models
is carried out using numerical algorithms, the book contains a
chapter on estimating parametric nonlinear models and another on
estimating nonparametric ones.
Forecasting is a major reason for building time series models,
linear or nonlinear. The book contains a discussion on forecasting
with nonlinear models, both parametric and nonparametric, and
considers numerical techniques necessary for computing multi-period
forecasts from them. The main focus of the book is on models of the
conditional mean, but models of the conditional variance, mainly
those of autoregressive conditional heteroskedasticity, receive
attention as well. A separate chapter is devoted to state space
models. As a whole, the book is an indispensable tool for
researchers interested in nonlinear time series and is also
suitable for teaching courses in econometrics and time series
analysis.
Nonlinear Econometric Modeling in Time Series presents the more
recent literature on nonlinear time series. Specific topics covered
with respect to nonlinearity include cointegration tests,
risk-related asymmetries, structural breaks and outliers, Bayesian
analysis with a threshold, consistency and asymptotic normality,
asymptotic inference and error-correction models. With a
world-class panel of contributors, this volume addresses topics
with major applications for fields such as foreign-exchange markets
and interest rate analysis. Eleventh in this series of
international symposia, this volume is also part of the European
Conference Series in Quantitative Economics and Econometrics (EC)2.
Nonlinear Econometric Modeling in Time Series Analysis presents recent developments in this important area of research. This is the first volume to focus on the more recent literature on nonlinear time series. Specific topics covered with respect to nonlinearity include cointegration tests, risk-related asymmetries, structural breaks and outliers, Bayesian analysis with a threshold, consistency and asymptotic normality, asymptotic inference, and error-correction models.
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