Predicting the dependencies between observations from multiple time series is critical for applications such as anomaly detection, financial risk management, causal analysis, or demand forecasting. However, the computational and numerical difficulties of estimating time-varying and high-dimensional covariance matrices often limits existing methods to handling at most a few hundred dimensions or requires making strong assumptions on the dependence between series. We propose to combine an RNN-based time series model with a Gaussian copula process output model with a low-rank covariance structure to reduce the computational complexity and handle non-Gaussian marginal distributions. This permits to drastically reduce the number of parameters an...
The field of time-series analysis has made important contributions to a wide spectrum of application...
Forecasts of various quantities over multiple time periods and/or spatial expanses are required to o...
We define a copula process which describes the dependencies between arbitrarily many random variable...
Predicting the dependencies between observations from multiple time series is critical for applicati...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
Most existing reduced-form macroeconomic multivariate time series models employ elliptical disturban...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
123 pagesDue to the advent of “big data” technologies, mixed data that consist of both categorical a...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Measuring dependence in a multivariate time series is tantamount to modelling its dynamicstructure i...
Most existing reduced-form macroeconomic multivariate time series models employ elliptical disturban...
The study of dependence between random variables is the core of theoretical and applied statistics. ...
Analyzing multivariate time series data is important to predict future events and changes of complex...
Multivariate time series exhibit two types of dependence: across variables and across time points. V...
The field of time-series analysis has made important contributions to a wide spectrum of application...
Forecasts of various quantities over multiple time periods and/or spatial expanses are required to o...
We define a copula process which describes the dependencies between arbitrarily many random variable...
Predicting the dependencies between observations from multiple time series is critical for applicati...
Almost all existing nonlinear multivariate time series models remain linear, conditional on a point ...
Most existing reduced-form macroeconomic multivariate time series models employ elliptical disturban...
Analysis of multivariate time series is a common problem in areas like finance and eco-nomics. The c...
123 pagesDue to the advent of “big data” technologies, mixed data that consist of both categorical a...
We introduce a copula-based dynamic model for multivariate processes of (non-negative) high-frequenc...
Copulas have proven to be very successful tools for the flexible modelling of cross-sectional depend...
Measuring dependence in a multivariate time series is tantamount to modelling its dynamicstructure i...
Most existing reduced-form macroeconomic multivariate time series models employ elliptical disturban...
The study of dependence between random variables is the core of theoretical and applied statistics. ...
Analyzing multivariate time series data is important to predict future events and changes of complex...
Multivariate time series exhibit two types of dependence: across variables and across time points. V...
The field of time-series analysis has made important contributions to a wide spectrum of application...
Forecasts of various quantities over multiple time periods and/or spatial expanses are required to o...
We define a copula process which describes the dependencies between arbitrarily many random variable...