11 research outputs found
Prediction intervals for neural network models using weighted asymmetric loss functions
We propose a simple and efficient approach to generate prediction intervals
(PIs) for approximated and forecasted trends. Our method leverages a weighted
asymmetric loss function to estimate the lower and upper bounds of the PIs,
with the weights determined by the interval width. We provide a concise
mathematical proof of the method, show how it can be extended to derive PIs for
parametrised functions and argue why the method works for predicting PIs of
dependent variables. The presented tests of the method on a real-world
forecasting task using a neural network-based model show that it can produce
reliable PIs in complex machine learning scenarios.Comment: 14 pages, 3 figures, not submitted anywhere ye