The field of time-series analysis has made important contributions to a wide spectrum of applications such as tide-level studies in hydrology, natural resource prospecting in geo-statistics, speech recognition, weather forecasting, financial trading, and economic forecasts and analysis. Nevertheless, the analysis of the non-Gaussian and non-stationary features of time-series remains challenging for the current state-of-art models. This thesis proposes an innovative framework that leverages the theory of copula, combined with a probabilistic framework from the machine learning community, to produce a versatile tool for multiple time-series analysis. I coined this new model Kernel-based Copula Processes (KCPs). Under the new proposed f...
Stationary and ergodic time series can be constructed using an s-vine decomposition based on sets of...
While copulas constructed from inverting latent elliptical, or skew-elliptical, distributions are po...
none3This paper suggests a new technique to construct first order Markov processes using products of...
The field of time-series analysis has made important contributions to a wide spectrum of application...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In this case, the Gaussian Copula is used to connect the data that correlates with the time and with...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
We propose parametric copulas that capture serial dependence in stationary heteroskedastic time seri...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
There is well-documented evidence that the dependence structure of financial assets is often charact...
Purpose – This paper aims to statistically model the serial dependence in the first and second momen...
We tackle the problem of multi-task learning with copula process. Multivariable prediction in spatia...
AbstractThis survey reviews the large and growing literature on copula-based models for economic and...
Stationary and ergodic time series can be constructed using an s-vine decomposition based on sets of...
While copulas constructed from inverting latent elliptical, or skew-elliptical, distributions are po...
none3This paper suggests a new technique to construct first order Markov processes using products of...
The field of time-series analysis has made important contributions to a wide spectrum of application...
Integer-valued time series comprising count observations at regular time intervals can be observed i...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
In this case, the Gaussian Copula is used to connect the data that correlates with the time and with...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
AbstractThe authors extend to multivariate contexts the copula-based univariate time series modeling...
We propose parametric copulas that capture serial dependence in stationary heteroskedastic time seri...
A class of bivariate integer-valued time series models was constructed via copula theory. Each serie...
There is well-documented evidence that the dependence structure of financial assets is often charact...
Purpose – This paper aims to statistically model the serial dependence in the first and second momen...
We tackle the problem of multi-task learning with copula process. Multivariable prediction in spatia...
AbstractThis survey reviews the large and growing literature on copula-based models for economic and...
Stationary and ergodic time series can be constructed using an s-vine decomposition based on sets of...
While copulas constructed from inverting latent elliptical, or skew-elliptical, distributions are po...
none3This paper suggests a new technique to construct first order Markov processes using products of...