Statistical prediction models inform decision-making processes in many real-world settings. Prior to using predictions in practice, one must rigorously test and validate candidate models to ensure that the proposed predictions have sufficient accuracy to be used in practice. In this paper, we present a framework for evaluating time series predictions that emphasizes computational simplicity and an intuitive interpretation using the relative mean absolute error metric. For a single time series, this metric enables comparisons of candidate model predictions against naive reference models, a method that can provide useful and standardized performance benchmarks. Additionally, in applications with multiple time series, this framework facilitate...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
We derive the form of the best mean squared relative error predictor of Y given X. Some methods of e...
Cognitive models have been paramount for modeling phenomena for which empirical data are unavailable...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Time series cross-validation is a technique to select forecasting models. Despite the sophistication...
Many accuracy measures have been proposed in the past for time series forecasting comparisons. Howev...
Many accuracy measures have been proposed in the past for time series forecasting comparisons. Howev...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
Cite as: Davydenko, A., & Goodwin, P. (2021). Assessing point forecast bias across multiple time ser...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
One of the major motivations for the analysis and modeling of time series data is the forecasting of...
Recent trends in the Machine Learning (ML) and in particular Deep Learning (DL) domains have demonst...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
We derive the form of the best mean squared relative error predictor of Y given X. Some methods of e...
Cognitive models have been paramount for modeling phenomena for which empirical data are unavailable...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
This study evaluated measures for making comparisons of errors across time series. We analyzed 90 an...
Time series cross-validation is a technique to select forecasting models. Despite the sophistication...
Many accuracy measures have been proposed in the past for time series forecasting comparisons. Howev...
Many accuracy measures have been proposed in the past for time series forecasting comparisons. Howev...
We derive generalization error bounds — bounds on the expected inaccuracy of the predictions — for t...
In this paper we propose a general framework to analyze prediction in time series models and show ho...
Cite as: Davydenko, A., & Goodwin, P. (2021). Assessing point forecast bias across multiple time ser...
Dengue viruses, which infect millions of people per year worldwide, cause large epidemics that strai...
Tests for relative predictive accuracy have become a widespread adden-dum to forecast comparisons. M...
One of the major motivations for the analysis and modeling of time series data is the forecasting of...
Recent trends in the Machine Learning (ML) and in particular Deep Learning (DL) domains have demonst...
Machine Learning (ML) methods have been proposed in the academic literature as alternatives to stati...
We derive the form of the best mean squared relative error predictor of Y given X. Some methods of e...
Cognitive models have been paramount for modeling phenomena for which empirical data are unavailable...