Think Globally, Act Locally: A Deep Neural Network Approach to High-Dimensional Time Series Forecasting
About
Forecasting high-dimensional time series plays a crucial role in many applications such as demand forecasting and financial predictions. Modern datasets can have millions of correlated time-series that evolve together, i.e they are extremely high dimensional (one dimension for each individual time-series). There is a need for exploiting global patterns and coupling them with local calibration for better prediction. However, most recent deep learning approaches in the literature are one-dimensional, i.e, even though they are trained on the whole dataset, during prediction, the future forecast for a single dimension mainly depends on past values from the same dimension. In this paper, we seek to correct this deficiency and propose DeepGLO, a deep forecasting model which thinks globally and acts locally. In particular, DeepGLO is a hybrid model that combines a global matrix factorization model regularized by a temporal convolution network, along with another temporal network that can capture local properties of each time-series and associated covariates. Our model can be trained effectively on high-dimensional but diverse time series, where different time series can have vastly different scales, without a priori normalization or rescaling. Empirical results demonstrate that DeepGLO can outperform state-of-the-art approaches; for example, we see more than 25% improvement in WAPE over other methods on a public dataset that contains more than 100K-dimensional time series.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Traffic speed forecasting | METR-LA (test) | MAE2.91 | 195 | |
| Traffic speed forecasting | PEMS-BAY (test) | MAE1.39 | 98 | |
| Traffic Flow Forecasting | PEMS08 (test) | MAE15.12 | 66 | |
| Traffic Flow Forecasting | PEMS04 (test) | MAE25.45 | 66 | |
| Multivariate Time-series Forecasting | solar | MAE0.178 | 52 | |
| Traffic Flow Forecasting | PEMS03 (test) | MAE17.25 | 49 | |
| Multivariate Time-series Forecasting | ECG (test) | MAE0.09 | 33 | |
| Multivariate Time-series Forecasting | Solar (test) | MAE0.09 | 29 | |
| Traffic Forecasting | PEMS07 (test) | MAE3.01 | 27 | |
| Short-term forecasting | COVID-19 | MAE0.169 | 26 |