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Main Authors: Santamaria-Valenzuela, Inmaculada, Rodriguez-Fernandez, Victor, Huertas-Tato, Javier, Park, Jong Hyuk, Camacho, David
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2504.20099
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author Santamaria-Valenzuela, Inmaculada
Rodriguez-Fernandez, Victor
Huertas-Tato, Javier
Park, Jong Hyuk
Camacho, David
author_facet Santamaria-Valenzuela, Inmaculada
Rodriguez-Fernandez, Victor
Huertas-Tato, Javier
Park, Jong Hyuk
Camacho, David
contents The present study explores the interpretability of latent spaces produced by time series foundation models, focusing on their potential for visual analysis tasks. Specifically, we evaluate the MOMENT family of models, a set of transformer-based, pre-trained architectures for multivariate time series tasks such as: imputation, prediction, classification, and anomaly detection. We evaluate the capacity of these models on five datasets to capture the underlying structures in time series data within their latent space projection and validate whether fine tuning improves the clarity of the resulting embedding spaces. Notable performance improvements in terms of loss reduction were observed after fine tuning. Visual analysis shows limited improvement in the interpretability of the embeddings, requiring further work. Results suggest that, although Time Series Foundation Models such as MOMENT are robust, their latent spaces may require additional methodological refinements to be adequately interpreted, such as alternative projection techniques, loss functions, or data preprocessing strategies. Despite the limitations of MOMENT, foundation models supose a big reduction in execution time and so a great advance for interactive visual analytics.
format Preprint
id arxiv_https___arxiv_org_abs_2504_20099
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Decoding Latent Spaces: Assessing the Interpretability of Time Series Foundation Models for Visual Analytics
Santamaria-Valenzuela, Inmaculada
Rodriguez-Fernandez, Victor
Huertas-Tato, Javier
Park, Jong Hyuk
Camacho, David
Machine Learning
Artificial Intelligence
The present study explores the interpretability of latent spaces produced by time series foundation models, focusing on their potential for visual analysis tasks. Specifically, we evaluate the MOMENT family of models, a set of transformer-based, pre-trained architectures for multivariate time series tasks such as: imputation, prediction, classification, and anomaly detection. We evaluate the capacity of these models on five datasets to capture the underlying structures in time series data within their latent space projection and validate whether fine tuning improves the clarity of the resulting embedding spaces. Notable performance improvements in terms of loss reduction were observed after fine tuning. Visual analysis shows limited improvement in the interpretability of the embeddings, requiring further work. Results suggest that, although Time Series Foundation Models such as MOMENT are robust, their latent spaces may require additional methodological refinements to be adequately interpreted, such as alternative projection techniques, loss functions, or data preprocessing strategies. Despite the limitations of MOMENT, foundation models supose a big reduction in execution time and so a great advance for interactive visual analytics.
title Decoding Latent Spaces: Assessing the Interpretability of Time Series Foundation Models for Visual Analytics
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2504.20099