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Time-o1: Time-Series Forecasting Needs Transformed Label Alignment

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Training time-series forecast models presents unique challenges in designing effective learning objectives. Existing methods predominantly utilize the temporal mean squared error, which faces two critical challenges: (1) label autocorrelation, which leads to bias from the label sequence likelihood; (2) excessive amount of tasks, which increases with the forecast horizon and complicates optimization. To address these challenges, we propose Time-o1, a transformation-augmented learning objective tailored for time-series forecasting. The central idea is to transform the label sequence into decorrelated components with discriminated significance. Models are then trained to align the most significant components, thereby effectively mitigating label autocorrelation and reducing task amount. Extensive experiments demonstrate that Time-o1 achieves state-of-the-art performance and is compatible with various forecast models. Code is available at https://github.com/Master-PLC/Time-o1.

Hao Wang, Licheng Pan, Zhichao Chen, Xu Chen, Qingyang Dai, Lei Wang, Haoxuan Li, Zhouchen Lin• 2025

Related benchmarks

TaskDatasetResultRank
Short-term forecastingM4 Quarterly
MASE1.18
141
Short-term forecastingM4 Monthly
MASE0.93
125
Short-term forecastingM4 Yearly
MASE3.01
116
Short-term forecastingM4 (Others)
SMAPE4.852
83
Short-term Time Series ForecastingM4 Average
SMAPE11.841
53
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