SEMPO: Lightweight Foundation Models for Time Series Forecasting
Hui He, Kun Yi, Yuanchi Ma, Qi Zhang, Zhendong Niu, Guansong Pang

TL;DR
SEMPO introduces a lightweight, versatile foundation model for time series forecasting that effectively balances performance and resource efficiency through spectral decomposition and prompt-based transformers.
Contribution
It proposes SEMPO, a novel lightweight model with spectral and prompt modules, enabling strong generalization with less data and smaller size than existing large models.
Findings
Outperforms state-of-the-art methods in zero-shot forecasting
Requires significantly less pre-training data and model size
Demonstrates strong generalization across 16 datasets
Abstract
The recent boom of large pre-trained models witnesses remarkable success in developing foundation models (FMs) for time series forecasting. Despite impressive performance across diverse downstream forecasting tasks, existing time series FMs possess massive network architectures and require substantial pre-training on large-scale datasets, which significantly hinders their deployment in resource-constrained environments. In response to this growing tension between versatility and affordability, we propose SEMPO, a novel lightweight foundation model that requires pretraining on relatively small-scale data, yet exhibits strong general time series forecasting. Concretely, SEMPO comprises two key modules: 1) energy-aware SpEctral decomposition module, that substantially improves the utilization of pre-training data by modeling not only the high-energy frequency signals but also the…
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Taxonomy
TopicsStock Market Forecasting Methods · Traffic Prediction and Management Techniques · Forecasting Techniques and Applications
