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Main Authors: Li, Xinzhe, Liu, Ming, Gao, Shang
Format: Preprint
Published: 2023
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Online Access:https://arxiv.org/abs/2307.00456
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author Li, Xinzhe
Liu, Ming
Gao, Shang
author_facet Li, Xinzhe
Liu, Ming
Gao, Shang
contents This paper addresses the ethical concerns arising from the use of unauthorized public data in deep learning models and proposes a novel solution. Specifically, building on the work of Huang et al. (2021), we extend their bi-level optimization approach to generate unlearnable text using a gradient-based search technique. However, although effective, this approach faces practical limitations, including the requirement of batches of instances and model architecture knowledge that is not readily accessible to ordinary users with limited access to their own data. Furthermore, even with semantic-preserving constraints, unlearnable noise can alter the text's semantics. To address these challenges, we extract simple patterns from unlearnable text produced by bi-level optimization and demonstrate that the data remains unlearnable for unknown models. Additionally, these patterns are not instance- or dataset-specific, allowing users to readily apply them to text classification and question-answering tasks, even if only a small proportion of users implement them on their public content. We also open-source codes to generate unlearnable text and assess unlearnable noise to benefit the public and future studies.
format Preprint
id arxiv_https___arxiv_org_abs_2307_00456
institution arXiv
publishDate 2023
record_format arxiv
spellingShingle Make Text Unlearnable: Exploiting Effective Patterns to Protect Personal Data
Li, Xinzhe
Liu, Ming
Gao, Shang
Computation and Language
This paper addresses the ethical concerns arising from the use of unauthorized public data in deep learning models and proposes a novel solution. Specifically, building on the work of Huang et al. (2021), we extend their bi-level optimization approach to generate unlearnable text using a gradient-based search technique. However, although effective, this approach faces practical limitations, including the requirement of batches of instances and model architecture knowledge that is not readily accessible to ordinary users with limited access to their own data. Furthermore, even with semantic-preserving constraints, unlearnable noise can alter the text's semantics. To address these challenges, we extract simple patterns from unlearnable text produced by bi-level optimization and demonstrate that the data remains unlearnable for unknown models. Additionally, these patterns are not instance- or dataset-specific, allowing users to readily apply them to text classification and question-answering tasks, even if only a small proportion of users implement them on their public content. We also open-source codes to generate unlearnable text and assess unlearnable noise to benefit the public and future studies.
title Make Text Unlearnable: Exploiting Effective Patterns to Protect Personal Data
topic Computation and Language
url https://arxiv.org/abs/2307.00456