Two-Stage Framework for Seasonal Time Series Forecasting

03/03/2021
by   Qingyang Xu, et al.
0

Seasonal time series Forecasting remains a challenging problem due to the long-term dependency from seasonality. In this paper, we propose a two-stage framework to forecast univariate seasonal time series. The first stage explicitly learns the long-range time series structure in a time window beyond the forecast horizon. By incorporating the learned long-range structure, the second stage can enhance the prediction accuracy in the forecast horizon. In both stages, we integrate the auto-regressive model with neural networks to capture both linear and non-linear characteristics in time series. Our framework achieves state-of-the-art performance on M4 Competition Hourly datasets. In particular, we show that incorporating the intermediate results generated in the first stage to existing forecast models can effectively enhance their prediction performance.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/12/2022

Split Time Series into Patches: Rethinking Long-term Series Forecasting with Dateformer

Time is one of the most significant characteristics of time-series, yet ...
research
08/11/2021

Empirical Risk Minimization for Time Series: Nonparametric Performance Bounds for Prediction

Empirical risk minimization is a standard principle for choosing algorit...
research
05/10/2020

A Multi-Variate Triple-Regression Forecasting Algorithm for Long-Term Customized Allergy Season Prediction

In this paper, we propose a novel multi-variate algorithm using a triple...
research
06/25/2022

Multi-Variate Time Series Forecasting on Variable Subsets

We formulate a new inference task in the domain of multivariate time ser...
research
06/07/2021

DMIDAS: Deep Mixed Data Sampling Regression for Long Multi-Horizon Time Series Forecasting

Neural forecasting has shown significant improvements in the accuracy of...
research
04/02/2020

Incorporating travel behavior regularity into passenger flow forecasting

Accurate forecasting of passenger flow (i.e., ridership) is critical to ...
research
02/23/2021

Optimal Prediction Intervals for Macroeconomic Time Series Using Chaos and NSGA II

In a first-of-its-kind study, this paper proposes the formulation of con...

Please sign up or login with your details

Forgot password? Click here to reset