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Hauptverfasser: Kottapalli, Siva Rama Krishna, Hubli, Karthik, Chandrashekhara, Sandeep, Jain, Garima, Hubli, Sunayana, Botla, Gayathri, Doddaiah, Ramesh
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2504.04011
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author Kottapalli, Siva Rama Krishna
Hubli, Karthik
Chandrashekhara, Sandeep
Jain, Garima
Hubli, Sunayana
Botla, Gayathri
Doddaiah, Ramesh
author_facet Kottapalli, Siva Rama Krishna
Hubli, Karthik
Chandrashekhara, Sandeep
Jain, Garima
Hubli, Sunayana
Botla, Gayathri
Doddaiah, Ramesh
contents Transformer-based foundation models have emerged as a dominant paradigm in time series analysis, offering unprecedented capabilities in tasks such as forecasting, anomaly detection, classification, trend analysis and many more time series analytical tasks. This survey provides a comprehensive overview of the current state of the art pre-trained foundation models, introducing a novel taxonomy to categorize them across several dimensions. Specifically, we classify models by their architecture design, distinguishing between those leveraging patch-based representations and those operating directly on raw sequences. The taxonomy further includes whether the models provide probabilistic or deterministic predictions, and whether they are designed to work with univariate time series or can handle multivariate time series out of the box. Additionally, the taxonomy encompasses model scale and complexity, highlighting differences between lightweight architectures and large-scale foundation models. A unique aspect of this survey is its categorization by the type of objective function employed during training phase. By synthesizing these perspectives, this survey serves as a resource for researchers and practitioners, providing insights into current trends and identifying promising directions for future research in transformer-based time series modeling.
format Preprint
id arxiv_https___arxiv_org_abs_2504_04011
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Foundation Models for Time Series: A Survey
Kottapalli, Siva Rama Krishna
Hubli, Karthik
Chandrashekhara, Sandeep
Jain, Garima
Hubli, Sunayana
Botla, Gayathri
Doddaiah, Ramesh
Machine Learning
Artificial Intelligence
Transformer-based foundation models have emerged as a dominant paradigm in time series analysis, offering unprecedented capabilities in tasks such as forecasting, anomaly detection, classification, trend analysis and many more time series analytical tasks. This survey provides a comprehensive overview of the current state of the art pre-trained foundation models, introducing a novel taxonomy to categorize them across several dimensions. Specifically, we classify models by their architecture design, distinguishing between those leveraging patch-based representations and those operating directly on raw sequences. The taxonomy further includes whether the models provide probabilistic or deterministic predictions, and whether they are designed to work with univariate time series or can handle multivariate time series out of the box. Additionally, the taxonomy encompasses model scale and complexity, highlighting differences between lightweight architectures and large-scale foundation models. A unique aspect of this survey is its categorization by the type of objective function employed during training phase. By synthesizing these perspectives, this survey serves as a resource for researchers and practitioners, providing insights into current trends and identifying promising directions for future research in transformer-based time series modeling.
title Foundation Models for Time Series: A Survey
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2504.04011