Assessing the calibration of multivariate probabilistic forecasts

07/11/2023
by   Sam Allen, et al.
0

Rank and PIT histograms are established tools to assess the calibration of probabilistic forecasts. They not only check whether an ensemble forecast is calibrated, but they also reveal what systematic biases (if any) are present in the forecasts. Several extensions of rank histograms have been proposed to evaluate the calibration of probabilistic forecasts for multivariate outcomes. These extensions introduce a so-called pre-rank function that condenses the multivariate forecasts and observations into univariate objects, from which a standard rank histogram can be produced. Existing pre-rank functions typically aim to preserve as much information as possible when condensing the multivariate forecasts and observations into univariate objects. Although this is sensible when conducting statistical tests for multivariate calibration, it can hinder the interpretation of the resulting histograms. In this paper, we demonstrate that there are few restrictions on the choice of pre-rank function, meaning forecasters can choose a pre-rank function depending on what information they want to extract from their forecasts. We introduce the concept of simple pre-rank functions, and provide examples that can be used to assess the location, scale, and dependence structure of multivariate probabilistic forecasts, as well as pre-rank functions tailored to the evaluation of probabilistic spatial field forecasts. The simple pre-rank functions that we introduce are easy to interpret, easy to implement, and they deliberately provide complementary information, meaning several pre-rank functions can be employed to achieve a more complete understanding of multivariate forecast performance. We then discuss how e-values can be employed to formally test for multivariate calibration over time. This is demonstrated in an application to wind speed forecasting using the EUPPBench post-processing benchmark data set.

READ FULL TEXT

page 10

page 12

page 17

research
06/21/2022

Comparison of multivariate post-processing methods using global ECMWF ensemble forecasts

An influential step in weather forecasting was the introduction of ensem...
research
11/29/2022

Score-based calibration testing for multivariate forecast distributions

Multivariate distributional forecasts have become widespread in recent y...
research
05/18/2020

On the number of bins in a rank histogram

Rank histograms have become popular tools for assessing the reliability ...
research
12/12/2021

Recalibrating probabilistic forecasts of epidemics

Distributional forecasts are important for a wide variety of application...
research
09/11/2022

Weighted verification tools to evaluate univariate and multivariate forecasts for high-impact weather events

To mitigate the impacts associated with adverse weather conditions, mete...
research
10/02/2020

Evaluating real-time probabilistic forecasts with application to National Basketball Association outcome prediction

Motivated by the goal of evaluating real-time forecasts of home team win...
research
10/22/2014

Log-Optimal Portfolio Selection Using the Blackwell Approachability Theorem

We present a method for constructing the log-optimal portfolio using the...

Please sign up or login with your details

Forgot password? Click here to reset