Here we present a novel approach to the description of the lagged interdependence structure of stationary time series. The idea is to extend the use of copulas to the lagged (one-dimensional) series, to the analogy of the autocorrelation function. The use of such autocopulas can reveal the specifics of the lagged interdependence in a much finer way. However, the lagged interdependence is resulted from the dynamics, governing the series, therefore the known and popular copula models have little to do with that type of interdependence. True though, it seems rather cumbersome to calculate the exact form of the autocopula even for the simplest nonlinear time series models, so we confine ourselves here to an empirical and simulation based approa...
An emerging literature in time series econometrics concerns the modeling of potentially nonlinear te...
International audienceWe review ideas on temporal dependencies and recurrences in discrete time seri...
Analysis of economic time series often involves correlograms and partial correlograms as graphical d...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
Long-term temporal correlations observed in event sequences of natural and social phenomena have bee...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In this article the serial dependences between the observed time series and the lagged series, taken...
In this paper the serial dependences between the observed time series and the lagged series, taken i...
We propose parametric copulas that capture serial dependence in stationary heteroskedastic time seri...
This book presents a novel approach to time series econometrics, which studies the behavior of nonli...
The field of time-series analysis has made important contributions to a wide spectrum of application...
The modeling of nonlinear and non-Gaussian dependence structures is of great interest to many resear...
Stationary and ergodic time series can be constructed using an s-vine decomposition based on sets of...
To characterize temporal correlations in temporal networks, we define an autocorrelation function (A...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
An emerging literature in time series econometrics concerns the modeling of potentially nonlinear te...
International audienceWe review ideas on temporal dependencies and recurrences in discrete time seri...
Analysis of economic time series often involves correlograms and partial correlograms as graphical d...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
Long-term temporal correlations observed in event sequences of natural and social phenomena have bee...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In this article the serial dependences between the observed time series and the lagged series, taken...
In this paper the serial dependences between the observed time series and the lagged series, taken i...
We propose parametric copulas that capture serial dependence in stationary heteroskedastic time seri...
This book presents a novel approach to time series econometrics, which studies the behavior of nonli...
The field of time-series analysis has made important contributions to a wide spectrum of application...
The modeling of nonlinear and non-Gaussian dependence structures is of great interest to many resear...
Stationary and ergodic time series can be constructed using an s-vine decomposition based on sets of...
To characterize temporal correlations in temporal networks, we define an autocorrelation function (A...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
An emerging literature in time series econometrics concerns the modeling of potentially nonlinear te...
International audienceWe review ideas on temporal dependencies and recurrences in discrete time seri...
Analysis of economic time series often involves correlograms and partial correlograms as graphical d...