Classical spectral methods are subject to two fundamental limitations: they only can ac-count for covariance-related serial dependencies, and they require second-order stationarity. Much attention has been devoted recently to quantile-based spectral methods that go beyond covariance-based serial dependence features. At the same time, methods relaxing stationarity into much weaker local stationarity conditions have been developed for a variety of time-series models. Here, we are combining those two approaches by proposing quantile-based spectral methods for locally stationary processes. We therefore introduce time-varying versions of the copula spectra and periodograms that have been recently proposed in the literature, along with a new defi...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
We review spectral analysis and its application in inference for stationary processes. As can be see...
Classical spectral methods are subject to two fundamental limitations: they only can account for cov...
Classical spectral methods are subject to two fundamental limitations: they can account only for cov...
Quantile-and copula-related spectral concepts recently have been considered by various authors. Thos...
International audienceThis chapter presents a survey of some recent methods used in economics and fi...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
Quantile-based approaches to the spectral analysis of time series have recently attracted a lot of a...
Das Thema dieser Arbeit ist eine alternative Methode für die Spektralanalyse von strikt stationären ...
Quantile- and copula-related spectral concepts recently have been considered by various authors. Tho...
Quantile-based approaches to the spectral analysis of time series have recently attracted a lot of ...
Quantile-based approaches to the spectral analysis of time series have recently at-tracted a lot of ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
We review spectral analysis and its application in inference for stationary processes. As can be see...
Classical spectral methods are subject to two fundamental limitations: they only can account for cov...
Classical spectral methods are subject to two fundamental limitations: they can account only for cov...
Quantile-and copula-related spectral concepts recently have been considered by various authors. Thos...
International audienceThis chapter presents a survey of some recent methods used in economics and fi...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
In this paper we present an alternative method for the spectral analysis of a strictly stationary ti...
Quantile-based approaches to the spectral analysis of time series have recently attracted a lot of a...
Das Thema dieser Arbeit ist eine alternative Methode für die Spektralanalyse von strikt stationären ...
Quantile- and copula-related spectral concepts recently have been considered by various authors. Tho...
Quantile-based approaches to the spectral analysis of time series have recently attracted a lot of ...
Quantile-based approaches to the spectral analysis of time series have recently at-tracted a lot of ...
A time-varying quantile can be fitted to a sequence of observations by formulating a time series mod...
Spectral analysis has been widely used to characterize the properties of one or more time series in ...
We review spectral analysis and its application in inference for stationary processes. As can be see...