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TiDE: Time-series Dense Encoder×TSMixer: Architettura interamente MLP per la previsione di serie temporali×
CampoApprendimento profondoApprendimento profondo
FamigliaMachine learningMachine learning
Anno di origine20232023
IdeatoreAbhimanyu Das et al.Si-An Chen et al. (Google)
TipoMLP-based encoder-decoder for long-term time-series forecastingAll-MLP multivariate time-series forecasting model
Fonte seminaleDas, A., Kong, W., Leach, A., Mathur, S., Sen, R., & Yu, R. (2023). Long-term forecasting with TiDE: Time-series dense encoder. Transactions on Machine Learning Research. link ↗Chen, S.-A., Li, C.-L., Yoder, N., Arik, S. O., & Pfister, T. (2023). TSMixer: An all-MLP architecture for time series forecasting. Transactions on Machine Learning Research. link ↗
AliasTime-series Dense Encoder, TiDE model, Dense Encoder for Long-term Forecasting, Yoğun Kodlayıcı Zaman Serisi ModeliAll-MLP Time Series Mixer, Time Series Mixer, TSMixer Forecasting Model, Zaman Serisi Karıştırıcı
Correlati33
SintesiTiDE (Time-series Dense Encoder) is an MLP-based encoder-decoder architecture for long-term multivariate time-series forecasting, introduced by Abhimanyu Das and colleagues at Google Research in 2023. The model encodes past time-series observations together with static and dynamic covariates through stacked dense (MLP) layers, then decodes a latent representation into future forecasts. TiDE demonstrates that simple linear and dense architectures can match or outperform Transformer-based models on standard long-term forecasting benchmarks while being significantly faster.TSMixer is a multivariate time-series forecasting model introduced by Si-An Chen and colleagues at Google in 2023. It challenges the prevailing dominance of Transformer-based architectures by demonstrating that a simple stack of interleaved MLP layers — alternating between mixing along the time axis and mixing across feature channels — achieves strong forecasting accuracy while remaining computationally efficient and easy to interpret architecturally.
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ScholarGateConfronta i metodi: TiDE · TSMixer. Consultato il 2026-06-17 da https://scholargate.app/it/compare