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Auteurs principaux: Arif, Huzaifa, Murugesan, Keerthiram, Das, Payel, Gittens, Alex, Chen, Pin-Yu
Format: Preprint
Publié: 2025
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Accès en ligne:https://arxiv.org/abs/2504.06410
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author Arif, Huzaifa
Murugesan, Keerthiram
Das, Payel
Gittens, Alex
Chen, Pin-Yu
author_facet Arif, Huzaifa
Murugesan, Keerthiram
Das, Payel
Gittens, Alex
Chen, Pin-Yu
contents This paper explores inference-time data leakage risks of deep neural networks (NNs), where a curious and honest model service provider is interested in retrieving users' private data inputs solely based on the model inference results. Particularly, we revisit residual NNs due to their popularity in computer vision and our hypothesis that residual blocks are a primary cause of data leakage owing to the use of skip connections. By formulating inference-time data leakage as a constrained optimization problem, we propose a novel backward feature inversion method, \textbf{PEEL}, which can effectively recover block-wise input features from the intermediate output of residual NNs. The surprising results in high-quality input data recovery can be explained by the intuition that the output from these residual blocks can be considered as a noisy version of the input and thus the output retains sufficient information for input recovery. We demonstrate the effectiveness of our layer-by-layer feature inversion method on facial image datasets and pre-trained classifiers. Our results show that PEEL outperforms the state-of-the-art recovery methods by an order of magnitude when evaluated by mean squared error (MSE). The code is available at \href{https://github.com/Huzaifa-Arif/PEEL}{https://github.com/Huzaifa-Arif/PEEL}
format Preprint
id arxiv_https___arxiv_org_abs_2504_06410
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle PEEL the Layers and Find Yourself: Revisiting Inference-time Data Leakage for Residual Neural Networks
Arif, Huzaifa
Murugesan, Keerthiram
Das, Payel
Gittens, Alex
Chen, Pin-Yu
Machine Learning
Cryptography and Security
Computer Vision and Pattern Recognition
This paper explores inference-time data leakage risks of deep neural networks (NNs), where a curious and honest model service provider is interested in retrieving users' private data inputs solely based on the model inference results. Particularly, we revisit residual NNs due to their popularity in computer vision and our hypothesis that residual blocks are a primary cause of data leakage owing to the use of skip connections. By formulating inference-time data leakage as a constrained optimization problem, we propose a novel backward feature inversion method, \textbf{PEEL}, which can effectively recover block-wise input features from the intermediate output of residual NNs. The surprising results in high-quality input data recovery can be explained by the intuition that the output from these residual blocks can be considered as a noisy version of the input and thus the output retains sufficient information for input recovery. We demonstrate the effectiveness of our layer-by-layer feature inversion method on facial image datasets and pre-trained classifiers. Our results show that PEEL outperforms the state-of-the-art recovery methods by an order of magnitude when evaluated by mean squared error (MSE). The code is available at \href{https://github.com/Huzaifa-Arif/PEEL}{https://github.com/Huzaifa-Arif/PEEL}
title PEEL the Layers and Find Yourself: Revisiting Inference-time Data Leakage for Residual Neural Networks
topic Machine Learning
Cryptography and Security
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2504.06410