Using a time series model to mimic an observed time series has a long history. However, with regard to this objective, conventional estimation methods for discrete-time dynamical models are frequently found to be wanting. In fact, they are characteristically misguided in at least two respects: (i) assuming that there is a true model; (ii) evaluating the efficacy of the estimation as if the postulated model is true. There are numerous examples of models, when fitted by conventional methods, that fail to capture some of the most basic global features of the data, such as cycles with good matching periods, singularities of spectral density functions (especially at the origin) and others. We argue that the shortcomings need not always be due to...
We consider band-limited frequency-domain goodness-of-fit testing for stationary time series, withou...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
Most time-series models assume that the data come from observations that are equally spaced in time....
Using a time series model to mimic an observed time series has a long history. However, with regard ...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
This paper applies techniques of Quantile Data Analysis to non-parametrically analyze time series fu...
Time series observations are ubiquitous in astronomy and are generated, for example, to distinguish ...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
A time series is a chronological sequence of observations on a particular variable. Usually the obse...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
Time series within fields such as finance and economics are often modelled using long memory process...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
Time series analytics is a fundamental prerequisite for decision-making as well as automation and oc...
We consider band-limited frequency-domain goodness-of-fit testing for stationary time series, withou...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
Most time-series models assume that the data come from observations that are equally spaced in time....
Using a time series model to mimic an observed time series has a long history. However, with regard ...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
Capturing the dynamical properties of time series concisely as interpretable feature vectors can ena...
This paper applies techniques of Quantile Data Analysis to non-parametrically analyze time series fu...
Time series observations are ubiquitous in astronomy and are generated, for example, to distinguish ...
This dissertation is motivated from enabling various tasks in large scale data mining of time series...
A time series is a chronological sequence of observations on a particular variable. Usually the obse...
This paper compares two alternative models for autocorrelated count time series. The first model can...
This paper brings together two topics in the estimation of time series forecasting models: the use o...
Time series within fields such as finance and economics are often modelled using long memory process...
Virtually all methods of learning dynamic models from data start from the same basic assumption: tha...
Time series analytics is a fundamental prerequisite for decision-making as well as automation and oc...
We consider band-limited frequency-domain goodness-of-fit testing for stationary time series, withou...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
Most time-series models assume that the data come from observations that are equally spaced in time....