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Achieving Long-term Time Series Forecasting Models with Fewer Than 1k Parameters through Dynamic Sparse Training | Synapse
March 3, 2026
Achieving Long-term Time Series Forecasting Models with Fewer Than 1k Parameters through Dynamic Sparse Training
QX
Qiao Xiao
Chongqing Jiaotong University
BW
Boqian Wu
University of Luxembourg
MP
Mykola Pechenizkiy
Eindhoven University of Technology
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Puntos clave
Achieving long-term time series forecasting models with fewer than 1,000 parameters improves predictive performance.
The analysis highlights the effectiveness of dynamic sparse training in enhancing model optimization and efficiency.
A comprehensive review evaluates the impact of parameter reduction on forecast accuracy across various datasets.
This work supports the need for efficient modeling in time series tasks, emphasizing model performance with reduced complexity.
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Xiao et al. (Tue,) studied this question.
synapsesocial.com/papers/69a766a4badf0bb9e87ddcad
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