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Auteurs principaux: Hoque, Shahinul, Riya, Farhin Farhad, Yang, Yingyuan, Sun, Jinyuan
Format: Preprint
Publié: 2023
Sujets:
Accès en ligne:https://arxiv.org/abs/2301.12333
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author Hoque, Shahinul
Riya, Farhin Farhad
Yang, Yingyuan
Sun, Jinyuan
author_facet Hoque, Shahinul
Riya, Farhin Farhad
Yang, Yingyuan
Sun, Jinyuan
contents In response to the growing popularity of Machine Learning (ML) techniques to solve problems in various industries, various malicious groups have started to target such techniques in their attack plan. However, as ML models are constantly updated with continuous data, it is very hard to monitor the integrity of ML models. One probable solution would be to use hashing techniques. Regardless of how that would mean re-hashing the model each time the model is trained on newer data which is computationally expensive and not a feasible solution for ML models that are trained on continuous data. Therefore, in this paper, we propose a model integrity-checking mechanism that uses model watermarking techniques to monitor the integrity of ML models. We then demonstrate that our proposed technique can monitor the integrity of ML models even when the model is further trained on newer data with a low computational cost. Furthermore, the integrity checking mechanism can be used on Deep Learning models that work on complex data distributions such as Cyber-Physical System applications.
format Preprint
id arxiv_https___arxiv_org_abs_2301_12333
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Deep Learning model integrity checking mechanism using watermarking technique
Hoque, Shahinul
Riya, Farhin Farhad
Yang, Yingyuan
Sun, Jinyuan
Cryptography and Security
In response to the growing popularity of Machine Learning (ML) techniques to solve problems in various industries, various malicious groups have started to target such techniques in their attack plan. However, as ML models are constantly updated with continuous data, it is very hard to monitor the integrity of ML models. One probable solution would be to use hashing techniques. Regardless of how that would mean re-hashing the model each time the model is trained on newer data which is computationally expensive and not a feasible solution for ML models that are trained on continuous data. Therefore, in this paper, we propose a model integrity-checking mechanism that uses model watermarking techniques to monitor the integrity of ML models. We then demonstrate that our proposed technique can monitor the integrity of ML models even when the model is further trained on newer data with a low computational cost. Furthermore, the integrity checking mechanism can be used on Deep Learning models that work on complex data distributions such as Cyber-Physical System applications.
title Deep Learning model integrity checking mechanism using watermarking technique
topic Cryptography and Security
url https://arxiv.org/abs/2301.12333