แนวคิดหลัก
DisenTS, a novel framework leveraging multiple distinct forecasting models, enhances multivariate time series forecasting by implicitly disentangling and modeling diverse channel evolving patterns.
สถิติ
DisenTS-enhanced DLinear achieves an average MSE reduction of 14.7% on the Solar dataset and 7.0% on the Weather dataset.
DisenTS reduces overall MSE by 2.8% and 2.3% for SparseTSF and PatchTST, respectively, averaged across all settings.
Baseline models enhanced with DisenTS show nearly a 20% average reduction in MSE on the PEMS datasets.
คำพูด
"In the literature, the majority of existing forecasting methods typically target the forecasting aspect. These approaches tend to concentrate solely on modeling the intricate temporal dependencies inherent in the original time series data [10], [11], with the goal of mitigating the impact of non-stationarity for stable forecasting [12]–[14], and achieving higher computational efficiency [15], [16]. However, the inter-channel dependencies are also crucial for multivariate forecasting and the coarse channel-mixing embedding operation may fail to capture such information, ultimately leading to suboptimal results."
"While these methods have proven effective, they predominantly assume homogeneity among channels and adopt a unified pattern modeling scheme where a single model is applied to all input channels, as depicted in Fig. 1(b)."
"Intuitively, a practical solution is to decouple the original time series into explicitly different components such as trend, seasonality, and holidays [23], [24], and utilize multiple models to capture the potentially diverse evolving patterns [10], [20]."