I introduce a general, Bayesian method for modelling univariate time series data assumed to be drawn from a continuous, stochastic process. The method accommodates arbitrary temporal sampling, and takes into account measurement uncertainties for arbitrary error models (not just Gaussian) on both the time and signal variables. Any model for the deterministic component of the variation of the signal with time is supported, as is any model of the stochastic component on the signal and time variables. Models illustrated here are constant and sinusoidal models for the signal mean combined with a Gaussian stochastic component, as well as a purely stochastic model, the Ornstein–Uhlenbeck process. The posterior probability distribution over model p...
Most time-series models assume that the data come from observations that are equally spaced in time....
In this paper we consider the problem of the limits concerning the physical information that can be ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
I introduce a general, Bayesian method for modelling univariate time series data assumed to be drawn...
This paper addresses the problem of detecting and characterizing local variability in time series an...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
Time series observations are ubiquitous in astronomy and are generated, for example, to distinguish ...
D.Phil.During the last few years the number of known variable stars which show periodic light level ...
Period estimation is one of the central topics in astronomical time series analysis, where data is o...
Context. Period estimation is one of the central topics in astronomical time series analysis, in whi...
International audienceAperiodic variability is a characteristic feature of young stars, massive star...
The optical light curves of many quasars show variations of tenths of a magnitude or more on time sc...
Context. Period estimation is one of the central topics in astronomical time series analysis, in whi...
In this paper we consider the problem of the limits concerning the physical information that can be ...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Most time-series models assume that the data come from observations that are equally spaced in time....
In this paper we consider the problem of the limits concerning the physical information that can be ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...
I introduce a general, Bayesian method for modelling univariate time series data assumed to be drawn...
This paper addresses the problem of detecting and characterizing local variability in time series an...
We present the use of continuous-time autoregressive moving average (CARMA) models as a method for e...
Time series observations are ubiquitous in astronomy and are generated, for example, to distinguish ...
D.Phil.During the last few years the number of known variable stars which show periodic light level ...
Period estimation is one of the central topics in astronomical time series analysis, where data is o...
Context. Period estimation is one of the central topics in astronomical time series analysis, in whi...
International audienceAperiodic variability is a characteristic feature of young stars, massive star...
The optical light curves of many quasars show variations of tenths of a magnitude or more on time sc...
Context. Period estimation is one of the central topics in astronomical time series analysis, in whi...
In this paper we consider the problem of the limits concerning the physical information that can be ...
Time series-data accompanied with a sequential ordering-occur and evolve all around us. Analysing ti...
Most time-series models assume that the data come from observations that are equally spaced in time....
In this paper we consider the problem of the limits concerning the physical information that can be ...
The analysis of time series data is important in fields as disparate as the social sciences, biology...