Pre-training Enhanced Spatial-temporal Graph Neural Network for
Multivariate Time Series Forecasting
- URL: http://arxiv.org/abs/2206.09113v1
- Date: Sat, 18 Jun 2022 04:24:36 GMT
- Title: Pre-training Enhanced Spatial-temporal Graph Neural Network for
Multivariate Time Series Forecasting
- Authors: Zezhi Shao, Zhao Zhang, Fei Wang, Yongjun Xu
- Abstract summary: We propose a novel framework, in which STGNN is Enhanced by a scalable time series Pre-training model (STEP)
Specifically, we design a pre-training model to efficiently learn temporal patterns from very long-term history time series.
Our framework is capable of significantly enhancing downstream STGNNs, and our pre-training model aptly captures temporal patterns.
- Score: 13.441945545904504
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Multivariate Time Series (MTS) forecasting plays a vital role in a wide range
of applications. Recently, Spatial-Temporal Graph Neural Networks (STGNNs) have
become increasingly popular MTS forecasting methods. STGNNs jointly model the
spatial and temporal patterns of MTS through graph neural networks and
sequential models, significantly improving the prediction accuracy. But limited
by model complexity, most STGNNs only consider short-term historical MTS data,
such as data over the past one hour. However, the patterns of time series and
the dependencies between them (i.e., the temporal and spatial patterns) need to
be analyzed based on long-term historical MTS data. To address this issue, we
propose a novel framework, in which STGNN is Enhanced by a scalable time series
Pre-training model (STEP). Specifically, we design a pre-training model to
efficiently learn temporal patterns from very long-term history time series
(e.g., the past two weeks) and generate segment-level representations. These
representations provide contextual information for short-term time series input
to STGNNs and facilitate modeling dependencies between time series. Experiments
on three public real-world datasets demonstrate that our framework is capable
of significantly enhancing downstream STGNNs, and our pre-training model aptly
captures temporal patterns.
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