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Main Authors: Solís-García, Javier, Vega-Márquez, Belén, Nepomuceno, Juan A., Nepomuceno-Chamorro, Isabel A.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.19364
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author Solís-García, Javier
Vega-Márquez, Belén
Nepomuceno, Juan A.
Nepomuceno-Chamorro, Isabel A.
author_facet Solís-García, Javier
Vega-Márquez, Belén
Nepomuceno, Juan A.
Nepomuceno-Chamorro, Isabel A.
contents Multivariate Time Series Imputation (MTSI) is crucial for many applications, such as healthcare monitoring and traffic management, where incomplete data can compromise decision-making. Existing state-of-the-art methods, like Denoising Diffusion Probabilistic Models (DDPMs), achieve high imputation accuracy; however, they suffer from significant computational costs and are notably time-consuming due to their iterative nature. In this work, we propose CoSTI, an innovative adaptation of Consistency Models (CMs) for the MTSI domain. CoSTI employs Consistency Training to achieve comparable imputation quality to DDPMs while drastically reducing inference times, making it more suitable for real-time applications. We evaluate CoSTI across multiple datasets and missing data scenarios, demonstrating up to a 98% reduction in imputation time with performance on par with diffusion-based models. This work bridges the gap between efficiency and accuracy in generative imputation tasks, providing a scalable solution for handling missing data in critical spatio-temporal systems.
format Preprint
id arxiv_https___arxiv_org_abs_2501_19364
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle CoSTI: Consistency Models for (a faster) Spatio-Temporal Imputation
Solís-García, Javier
Vega-Márquez, Belén
Nepomuceno, Juan A.
Nepomuceno-Chamorro, Isabel A.
Machine Learning
Artificial Intelligence
Multivariate Time Series Imputation (MTSI) is crucial for many applications, such as healthcare monitoring and traffic management, where incomplete data can compromise decision-making. Existing state-of-the-art methods, like Denoising Diffusion Probabilistic Models (DDPMs), achieve high imputation accuracy; however, they suffer from significant computational costs and are notably time-consuming due to their iterative nature. In this work, we propose CoSTI, an innovative adaptation of Consistency Models (CMs) for the MTSI domain. CoSTI employs Consistency Training to achieve comparable imputation quality to DDPMs while drastically reducing inference times, making it more suitable for real-time applications. We evaluate CoSTI across multiple datasets and missing data scenarios, demonstrating up to a 98% reduction in imputation time with performance on par with diffusion-based models. This work bridges the gap between efficiency and accuracy in generative imputation tasks, providing a scalable solution for handling missing data in critical spatio-temporal systems.
title CoSTI: Consistency Models for (a faster) Spatio-Temporal Imputation
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2501.19364