المفاهيم الأساسية
LiNo, a novel time series forecasting framework, leverages recursive residual decomposition to effectively separate and model linear and nonlinear patterns in time series data, leading to more accurate and robust predictions.
الإحصائيات
LiNo reduced the MSE metric by 3.41% compared to the previous state-of-the-art method, iTransformer, across all 10 multivariate datasets.
LiNo demonstrated its superiority in nonlinear pattern extraction by achieving a substantial relative decrease of 11.89% in average MSE on the four PEMS-relevant benchmarks.
On the ECL dataset, LiNo decreased the average MSE from 0.178 to 0.164, representing a significant reduction of about 7.87%.
On six univariate datasets, LiNo reduced the MSE metric by 19.37% and the MAE by 10.28% compared to the previous SOTA method, MICN.
Notably, on the Weather, ETTh2, and Traffic datasets, the MSE decreased by 47.11%, 28.64%, and 12.97%, respectively.