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Main Authors: Taleb, Faiz, Gazeau, Ivan, Laurent, Maryline
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2603.24213
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author Taleb, Faiz
Gazeau, Ivan
Laurent, Maryline
author_facet Taleb, Faiz
Gazeau, Ivan
Laurent, Maryline
contents Deep learning models for time series imputation are now essential in fields such as healthcare, the Internet of Things (IoT), and finance. However, their deployment raises critical privacy concerns. Beyond the well-known issue of unintended memorization, which has been extensively studied in generative models, we demonstrate that time series models are vulnerable to inference attacks in a black-box setting. In this work, we introduce a two-stage attack framework comprising: (1) a novel membership inference attack based on a reference model that improves detection accuracy, even for models robust to overfitting-based attacks, and (2) the first attribute inference attack that predicts sensitive characteristics of the training data for timeseries imputation model. We evaluate these attacks on attention-based and autoencoder architectures in two scenarios: models that are trained from scratch, and fine-tuned models where the adversary has access to the initial weights. Our experimental results demonstrate that the proposed membership attack retrieves a significant portion of the training data with a tpr@top25% score significantly higher than a naive attack baseline. We show that our membership attack also provides a good insight of whether attribute inference will work (with a precision of 90% instead of 78% in the genral case).
format Preprint
id arxiv_https___arxiv_org_abs_2603_24213
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publishDate 2026
record_format arxiv
spellingShingle Uncovering Memorization in Timeseries Imputation models: LBRM Membership Inference and its link to attribute Leakage
Taleb, Faiz
Gazeau, Ivan
Laurent, Maryline
Machine Learning
Artificial Intelligence
Deep learning models for time series imputation are now essential in fields such as healthcare, the Internet of Things (IoT), and finance. However, their deployment raises critical privacy concerns. Beyond the well-known issue of unintended memorization, which has been extensively studied in generative models, we demonstrate that time series models are vulnerable to inference attacks in a black-box setting. In this work, we introduce a two-stage attack framework comprising: (1) a novel membership inference attack based on a reference model that improves detection accuracy, even for models robust to overfitting-based attacks, and (2) the first attribute inference attack that predicts sensitive characteristics of the training data for timeseries imputation model. We evaluate these attacks on attention-based and autoencoder architectures in two scenarios: models that are trained from scratch, and fine-tuned models where the adversary has access to the initial weights. Our experimental results demonstrate that the proposed membership attack retrieves a significant portion of the training data with a tpr@top25% score significantly higher than a naive attack baseline. We show that our membership attack also provides a good insight of whether attribute inference will work (with a precision of 90% instead of 78% in the genral case).
title Uncovering Memorization in Timeseries Imputation models: LBRM Membership Inference and its link to attribute Leakage
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.24213