Table of Contents
Fetching ...

VAEneu: A New Avenue for VAE Application on Probabilistic Forecasting

Alireza Koochali, Ensiye Tahaei, Andreas Dengel, Sheraz Ahmed

TL;DR

VAEneu provides a valuable tool for quantifying future uncertainties, and its extensive empirical study lays the foundation for future comparative studies for univariate multistep ahead univariate probabilistic forecasting.

Abstract

This paper presents VAEneu, an innovative autoregressive method for multistep ahead univariate probabilistic time series forecasting. We employ the conditional VAE framework and optimize the lower bound of the predictive distribution likelihood function by adopting the Continuous Ranked Probability Score (CRPS), a strictly proper scoring rule, as the loss function. This novel pipeline results in forecasting sharp and well-calibrated predictive distribution. Through a comprehensive empirical study, VAEneu is rigorously benchmarked against 12 baseline models across 12 datasets. The results unequivocally demonstrate VAEneu's remarkable forecasting performance. VAEneu provides a valuable tool for quantifying future uncertainties, and our extensive empirical study lays the foundation for future comparative studies for univariate multistep ahead probabilistic forecasting.

VAEneu: A New Avenue for VAE Application on Probabilistic Forecasting

TL;DR

VAEneu provides a valuable tool for quantifying future uncertainties, and its extensive empirical study lays the foundation for future comparative studies for univariate multistep ahead univariate probabilistic forecasting.

Abstract

This paper presents VAEneu, an innovative autoregressive method for multistep ahead univariate probabilistic time series forecasting. We employ the conditional VAE framework and optimize the lower bound of the predictive distribution likelihood function by adopting the Continuous Ranked Probability Score (CRPS), a strictly proper scoring rule, as the loss function. This novel pipeline results in forecasting sharp and well-calibrated predictive distribution. Through a comprehensive empirical study, VAEneu is rigorously benchmarked against 12 baseline models across 12 datasets. The results unequivocally demonstrate VAEneu's remarkable forecasting performance. VAEneu provides a valuable tool for quantifying future uncertainties, and our extensive empirical study lays the foundation for future comparative studies for univariate multistep ahead probabilistic forecasting.