Bridge the Performance Gap in Peak-hour Series Forecasting: The Seq2Peak Framework

07/04/2023
by   Zhenwei Zhang, et al.
1

Peak-Hour Series Forecasting (PHSF) is a crucial yet underexplored task in various domains. While state-of-the-art deep learning models excel in regular Time Series Forecasting (TSF), they struggle to achieve comparable results in PHSF. This can be attributed to the challenges posed by the high degree of non-stationarity in peak-hour series, which makes direct forecasting more difficult than standard TSF. Additionally, manually extracting the maximum value from regular forecasting results leads to suboptimal performance due to models minimizing the mean deficit. To address these issues, this paper presents Seq2Peak, a novel framework designed specifically for PHSF tasks, bridging the performance gap observed in TSF models. Seq2Peak offers two key components: the CyclicNorm pipeline to mitigate the non-stationarity issue, and a simple yet effective trainable-parameter-free peak-hour decoder with a hybrid loss function that utilizes both the original series and peak-hour series as supervised signals. Extensive experimentation on publicly available time series datasets demonstrates the effectiveness of the proposed framework, yielding a remarkable average relative improvement of 37.7% across four real-world datasets for both transformer- and non-transformer-based TSF models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/08/2022

Scaleformer: Iterative Multi-scale Refining Transformers for Time Series Forecasting

The performance of time series forecasting has recently been greatly imp...
research
02/04/2022

Self-Adaptive Forecasting for Improved Deep Learning on Non-Stationary Time-Series

Real-world time-series datasets often violate the assumptions of standar...
research
07/27/2022

Time Series Forecasting Models Copy the Past: How to Mitigate

Time series forecasting is at the core of important application domains ...
research
12/29/2021

AutoFITS: Automatic Feature Engineering for Irregular Time Series

A time series represents a set of observations collected over time. Typi...
research
07/04/2023

SageFormer: Series-Aware Graph-Enhanced Transformers for Multivariate Time Series Forecasting

Multivariate time series forecasting plays a critical role in diverse do...
research
10/17/2022

Flipped Classroom: Effective Teaching for Time Series Forecasting

Sequence-to-sequence models based on LSTM and GRU are a most popular cho...
research
03/09/2023

Enhancing Peak Network Traffic Prediction via Time-Series Decomposition

For network administration and maintenance, it is critical to anticipate...

Please sign up or login with your details

Forgot password? Click here to reset