2023
DOI: 10.48550/arxiv.2302.11974
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LightCTS: A Lightweight Framework for Correlated Time Series Forecasting

Abstract: Correlated time series (CTS) forecasting plays an essential role in many practical applications, such as traffic management and server load control. Many deep learning models have been proposed to improve the accuracy of CTS forecasting. However, while models have become increasingly complex and computationally intensive, they struggle to improve accuracy. Pursuing a different direction, this study aims instead to enable much more efficient, lightweight models that preserve accuracy while being able to be depl… Show more

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