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LightGTS: A Lightweight General Time Series Forecasting Model

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Existing works on general time series forecasting build foundation models with heavy model parameters through large-scale multi-source pre-training. These models achieve superior generalization ability across various datasets at the cost of significant computational burdens and limitations in resource-constrained scenarios. This paper introduces LightGTS, a lightweight general time series forecasting model designed from the perspective of consistent periodical modeling. To handle diverse scales and intrinsic periods in multi-source pre-training, we introduce Periodical Tokenization, which extracts consistent periodic patterns across different datasets with varying scales. To better utilize the periodicity in the decoding process, we further introduce Periodical Parallel Decoding, which leverages historical tokens to improve forecasting. Based on the two techniques above which fully leverage the inductive bias of periods inherent in time series, LightGTS uses a lightweight model to achieve outstanding performance on general time series forecasting. It achieves state-of-the-art forecasting performance on 9 real-world benchmarks in both zero-shot and full-shot settings with much better efficiency compared with existing time series foundation models.

Yihang Wang, Yuying Qiu, Peng Chen, Yang Shu, Zhongwen Rao, Lujia Pan, Bin Yang, Chenjuan Guo• 2025

Related benchmarks

TaskDatasetResultRank
Deterministic forecastingSolar TSFM-Bench
MSE0.219
21
Deterministic forecastingETT Avg TSFM-Bench
MSE0.339
21
Deterministic forecastingWeather TSFM-Bench
MSE0.219
20
Deterministic forecastingWind TSFM-Bench
MSE1.292
19
Deterministic forecastingElectricity TSFM-Bench
MSE0.233
16
Deterministic forecastingPEMS08 TSFM-Bench
MSE0.812
15
Deterministic forecastingNYSE TSFM-Bench
MSE0.62
14
Deterministic forecastingTraffic TSFM-Bench
MSE0.61
13
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