This book presents a novel approach to time series econometrics, which studies the behavior of nonlinear stochastic processes. This approach allows for an arbitrary dependence structure in the increments and provides a generalization with respect to the standard linear independent increments assumption of classical time series models. The book offers a solution to the problem of a general semiparametric approach, which is given by a concept called C-convolution (convolution of dependent variables), and the corresponding theory of convolution-based copulas. Intended for econometrics and statistics scholars with a special interest in time series analysis and copula functions (or other nonparametric approaches), the book is also useful for doc...
We consider a nonparametric method to estimate copulas, i.e. functions linking joint distributions t...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
Copulas are used to specify dependence between two or more random variables. The last few years have...
This book presents a novel approach to time series econometrics, which studies the behavior of nonli...
Beginning with a review of the issues surrounding dependence and correlation in finance and the basi...
The modeling of nonlinear and non-Gaussian dependence structures is of great interest to many resear...
We define a copula process which describes the dependencies between arbitrarily many random variable...
AbstractThis survey reviews the large and growing literature on copula-based models for economic and...
The modelling of dependence relations between random variables is one of the most widely studied sub...
We define a copula process which describes the dependencies between arbitrarily many random variable...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
An emerging literature in time series econometrics concerns the modeling of potentially nonlinear te...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In economics, many quantities are related to each other. Such economic relations are often much more...
We consider a nonparametric method to estimate copulas, i.e. functions linking joint distributions t...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
Copulas are used to specify dependence between two or more random variables. The last few years have...
This book presents a novel approach to time series econometrics, which studies the behavior of nonli...
Beginning with a review of the issues surrounding dependence and correlation in finance and the basi...
The modeling of nonlinear and non-Gaussian dependence structures is of great interest to many resear...
We define a copula process which describes the dependencies between arbitrarily many random variable...
AbstractThis survey reviews the large and growing literature on copula-based models for economic and...
The modelling of dependence relations between random variables is one of the most widely studied sub...
We define a copula process which describes the dependencies between arbitrarily many random variable...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
An emerging literature in time series econometrics concerns the modeling of potentially nonlinear te...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In economics, many quantities are related to each other. Such economic relations are often much more...
We consider a nonparametric method to estimate copulas, i.e. functions linking joint distributions t...
This paper studies the estimation of a class of copula-based semiparametric stationary Markov models...
Copulas are used to specify dependence between two or more random variables. The last few years have...