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Sparse transformer with local and seasonal adaptation for multivariate time series forecasting.
Zhang, Yifan; Wu, Rui; Dascalu, Sergiu M; Harris, Frederick C.
Afiliación
  • Zhang Y; Department of Computer Science and Engineering, University of Nevada, Reno, NV, 89557, USA. YifanZhang@MissouriState.edu.
  • Wu R; Department of Computer Science, Missouri State University, Springfield, MO, 65897, USA. YifanZhang@MissouriState.edu.
  • Dascalu SM; Department of Computer Science, East Carolina University, Greenville, NC, 27858, USA.
  • Harris FC; Department of Computer Science and Engineering, University of Nevada, Reno, NV, 89557, USA.
Sci Rep ; 14(1): 15909, 2024 Jul 10.
Article en En | MEDLINE | ID: mdl-38987385
ABSTRACT
Transformers have achieved remarkable performance in multivariate time series(MTS) forecasting due to their capability to capture long-term dependencies. However, the canonical attention mechanism has two key

limitations:

(1) its quadratic time complexity limits the sequence length, and (2) it generates future values from the entire historical sequence. To address this, we propose a Dozer Attention mechanism consisting of three sparse components (1) Local, each query exclusively attends to keys within a localized window of neighboring time steps. (2) Stride, enables each query to attend to keys at predefined intervals. (3) Vary, allows queries to selectively attend to keys from a subset of the historical sequence. Notably, the size of this subset dynamically expands as forecasting horizons extend. Those three components are designed to capture essential attributes of MTS data, including locality, seasonality, and global temporal dependencies. Additionally, we present the Dozerformer Framework, incorporating the Dozer Attention mechanism for the MTS forecasting task. We evaluated the proposed Dozerformer framework with recent state-of-the-art methods on nine benchmark datasets and confirmed its superior performance. The experimental results indicate that excluding a subset of historical time steps from the time series forecasting process does not compromise accuracy while significantly improving efficiency. Code is available at https//github.com/GRYGY1215/Dozerformer.

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: Sci Rep / Sci. rep. (Nat. Publ. Group) / Scientific reports (Nature Publishing Group) Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos

Texto completo: 1 Banco de datos: MEDLINE Idioma: En Revista: Sci Rep / Sci. rep. (Nat. Publ. Group) / Scientific reports (Nature Publishing Group) Año: 2024 Tipo del documento: Article País de afiliación: Estados Unidos