In this paper we propose a general framework to analyze prediction in time series models and show how a wide class of popular time series models satisfies this framework. We postulate a set of high-level assumptions, and formally verify these assumptions for the aforementioned time series models. Our framework coincides with that of Beutner et al. (2019, arXiv:1710.00643) who establish the validity of conditional confidence intervals for predictions made in this framework. The current paper therefore complements the results in Beutner et al. (2019, arXiv:1710.00643) by providing practically relevant applications of their theory
This thesis contains new developments in various topics in time series analysis and forecasting. The...
AbstractOur aim is to suggest ways of improving time-domain modelling, for the purpose of more effec...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
This article concerns the construction of prediction intervals for time series models. The estimativ...
Today’s world provides us with great potential in terms of data availability: “big data” is a term t...
Forecasting models involves predicting the future values of a particular series of data which is mai...
This dissertation covers several topics in estimation and forecasting in time series models. Chapter...
We propose bootstrap prediction intervals for an observation h periods into the future and its condi...
<p>In this thesis, I derive generalization error bounds — bounds on the expected inaccuracy of the p...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
Statistical prediction models inform decision-making processes in many real-world settings. Prior to...
This paper considers Bayesian long-run prediction in time series models. We allow time series to exh...
This thesis contains new developments in various topics in time series analysis and forecasting. The...
AbstractOur aim is to suggest ways of improving time-domain modelling, for the purpose of more effec...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
This article concerns the construction of prediction intervals for time series models. The estimativ...
Today’s world provides us with great potential in terms of data availability: “big data” is a term t...
Forecasting models involves predicting the future values of a particular series of data which is mai...
This dissertation covers several topics in estimation and forecasting in time series models. Chapter...
We propose bootstrap prediction intervals for an observation h periods into the future and its condi...
<p>In this thesis, I derive generalization error bounds — bounds on the expected inaccuracy of the p...
Mathematically speaking, time series are sets of observations that are generated sequentially over t...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
Prediction intervals in state space models can be obtained by assuming Gaussian innovations and usin...
Statistical prediction models inform decision-making processes in many real-world settings. Prior to...
This paper considers Bayesian long-run prediction in time series models. We allow time series to exh...
This thesis contains new developments in various topics in time series analysis and forecasting. The...
AbstractOur aim is to suggest ways of improving time-domain modelling, for the purpose of more effec...
In this article we consider the problem of prediction for a general class of Gaussian models, which ...