Self-Supervised Learning (SSL) has become a powerful paradigm in Artificial Intelligence, enabling the training of machine learning models using unlabeled data. However, in time series forecasting, SSL models are generally less effective than supervised models due to the complexity of temporal patterns, including trends, seasonality, and noise. To address this, we introduce TED4STL (Trend-Error Decomposition for Self-supervised Time-series Learning), a pipeline that decomposes each time series into two additive components, trend and error, and empirically test whether this decomposition improves the performance of SSL models. We adapt it to four SSL forecasting models and evaluate it on ten datasets. Experiments show that the decomposition consistently improves SSL forecasting accuracy, narrowing the gap with state-of-the-art supervised models and often surpassing them at short horizons.

Trend-Error Decomposition for Self-Supervised Time Series Learning in Multivariate Forecasting Task / Pederzoli, S.; Buono, F. D.; Vincini, M.; Guerra, F.. - In: IEEE ACCESS. - ISSN 2169-3536. - 14:(2026), pp. 8618-8631. [10.1109/ACCESS.2026.3653488]

Trend-Error Decomposition for Self-Supervised Time Series Learning in Multivariate Forecasting Task

Pederzoli S.;Vincini M.;Guerra F.
2026

Abstract

Self-Supervised Learning (SSL) has become a powerful paradigm in Artificial Intelligence, enabling the training of machine learning models using unlabeled data. However, in time series forecasting, SSL models are generally less effective than supervised models due to the complexity of temporal patterns, including trends, seasonality, and noise. To address this, we introduce TED4STL (Trend-Error Decomposition for Self-supervised Time-series Learning), a pipeline that decomposes each time series into two additive components, trend and error, and empirically test whether this decomposition improves the performance of SSL models. We adapt it to four SSL forecasting models and evaluate it on ten datasets. Experiments show that the decomposition consistently improves SSL forecasting accuracy, narrowing the gap with state-of-the-art supervised models and often surpassing them at short horizons.
2026
Inglese
14
8618
8631
Forecasting; Predictive models; Market research; Pipelines; Adaptation models; Computer architecture; Computational modeling; Accuracy; Data models; Data processing; data engineering; self-supervised learning; time series analysis; time series analysis
open
info:eu-repo/semantics/article
Contributo su RIVISTA::Articolo su rivista
262
Trend-Error Decomposition for Self-Supervised Time Series Learning in Multivariate Forecasting Task / Pederzoli, S.; Buono, F. D.; Vincini, M.; Guerra, F.. - In: IEEE ACCESS. - ISSN 2169-3536. - 14:(2026), pp. 8618-8631. [10.1109/ACCESS.2026.3653488]
Pederzoli, S.; Buono, F. D.; Vincini, M.; Guerra, F.
4
   Panacea: A Model-Based Framework for Self-Protecting Systems
   Panacea
   MUR
   Progetti di Ricerca di Rilevante Interesse Nazionale (PRIN) 2022
   2022Y45XE3
File in questo prodotto:
File Dimensione Formato  
Trend-Error_Decomposition_for_Self-Supervised_Time_Series_Learning_in_Multivariate_Forecasting_Task.pdf

Open access

Tipologia: VOR - Versione pubblicata dall'editore
Licenza: [IR] creative-commons
Dimensione 4.63 MB
Formato Adobe PDF
4.63 MB Adobe PDF Visualizza/Apri
Pubblicazioni consigliate

Licenza Creative Commons
I metadati presenti in IRIS UNIMORE sono rilasciati con licenza Creative Commons CC0 1.0 Universal, mentre i file delle pubblicazioni sono rilasciati con licenza Attribuzione 4.0 Internazionale (CC BY 4.0), salvo diversa indicazione.
In caso di violazione di copyright, contattare Supporto Iris

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1397688
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus 0
  • ???jsp.display-item.citation.isi??? 0
social impact