Long Term Time Series Forecasting
Long-term time series forecasting aims to accurately predict future values of time series data over extended horizons, a challenging task due to complex temporal dependencies and potential distribution shifts. Current research focuses on developing efficient and accurate models, exploring architectures like Transformers, state-space models (SSMs) such as Mamba, and variations of recurrent neural networks (RNNs) like LSTMs, often incorporating techniques like patching, frequency decomposition, and multi-scale normalization to improve performance. These advancements have significant implications for various fields, including finance, energy, and environmental science, enabling better resource allocation, risk management, and predictive maintenance.
Papers
ReCycle: Fast and Efficient Long Time Series Forecasting with Residual Cyclic Transformers
Arvid Weyrauch, Thomas Steens, Oskar Taubert, Benedikt Hanke, Aslan Eqbal, Ewa Götz, Achim Streit, Markus Götz, Charlotte Debus
Boosting MLPs with a Coarsening Strategy for Long-Term Time Series Forecasting
Nannan Bian, Minhong Zhu, Li Chen, Weiran Cai