Computer Science > Machine Learning
[Submitted on 18 Oct 2023 (v1), last revised 19 Dec 2023 (this version, v4)]
Title:Is Channel Independent strategy optimal for Time Series Forecasting?
View PDF HTML (experimental)Abstract:There has been an emergence of various models for long-term time series forecasting. Recent studies have demonstrated that a single linear layer, using Channel Dependent (CD) or Channel Independent (CI) modeling, can even outperform a large number of sophisticated models. However, current research primarily considers CD and CI as two complementary yet mutually exclusive approaches, unable to harness these two extremes simultaneously. And it is also a challenging issue that both CD and CI are static strategies that cannot be determined to be optimal for a specific dataset without extensive experiments. In this paper, we reconsider whether the current CI strategy is the best solution for time series forecasting. First, we propose a simple yet effective strategy called CSC, which stands for $\mathbf{C}$hannel $\mathbf{S}$elf-$\mathbf{C}$lustering strategy, for linear models. Our Channel Self-Clustering (CSC) enhances CI strategy's performance improvements while reducing parameter size, for exmpale by over 10 times on electricity dataset, and significantly cutting training time. Second, we further propose Channel Rearrangement (CR), a method for deep models inspired by the self-clustering. CR attains competitive performance against baselines. Finally, we also discuss whether it is best to forecast the future values using the historical values of the same channel as inputs. We hope our findings and methods could inspire new solutions beyond CD/CI.
Submission history
From: Yuan Peiwen [view email][v1] Wed, 18 Oct 2023 15:24:34 UTC (152 KB)
[v2] Wed, 15 Nov 2023 10:12:14 UTC (152 KB)
[v3] Mon, 18 Dec 2023 01:42:26 UTC (171 KB)
[v4] Tue, 19 Dec 2023 14:14:44 UTC (169 KB)
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