How to keep text private? A systematic review of deep learning methods for privacy-preserving natural language processing

被引:0
作者
Samuel Sousa
Roman Kern
机构
[1] Know-Center GmbH,
[2] Graz University of Technology,undefined
来源
Artificial Intelligence Review | 2023年 / 56卷
关键词
Deep learning; Privacy; Natural language processing; Differential privacy; Homomorphic encryption; Searchable encryption; Federated learning;
D O I
暂无
中图分类号
学科分类号
摘要
Deep learning (DL) models for natural language processing (NLP) tasks often handle private data, demanding protection against breaches and disclosures. Data protection laws, such as the European Union’s General Data Protection Regulation (GDPR), thereby enforce the need for privacy. Although many privacy-preserving NLP methods have been proposed in recent years, no categories to organize them have been introduced yet, making it hard to follow the progress of the literature. To close this gap, this article systematically reviews over sixty DL methods for privacy-preserving NLP published between 2016 and 2020, covering theoretical foundations, privacy-enhancing technologies, and analysis of their suitability for real-world scenarios. First, we introduce a novel taxonomy for classifying the existing methods into three categories: data safeguarding methods, trusted methods, and verification methods. Second, we present an extensive summary of privacy threats, datasets for applications, and metrics for privacy evaluation. Third, throughout the review, we describe privacy issues in the NLP pipeline in a holistic view. Further, we discuss open challenges in privacy-preserving NLP regarding data traceability, computation overhead, dataset size, the prevalence of human biases in embeddings, and the privacy-utility tradeoff. Finally, this review presents future research directions to guide successive research and development of privacy-preserving NLP models.
引用
收藏
页码:1427 / 1492
页数:65
相关论文
共 119 条
[1]  
Abuhamad M(2019)Code authorship identification using convolutional neural networks Futur Gener Comput Syst 95 104-115
[2]  
Js Rhim(2018)A survey on homomorphic encryption schemes: theory and implementation ACM Comput Surv (Csur) 51 1-35
[3]  
AbuHmed T(1996)Health insurance portability and accountability act of 1996 Public Law 104 191-1828
[4]  
Acar A(2020)Privacy-preserving deep learning nlp models for cancer registries IEEE Trans Emerg Top Comput 35 1798-45
[5]  
Aksu H(2013)Representation learning: A review and new perspectives IEEE Trans Pattern Anal Mach Intell 384 21-186
[6]  
Uluagac AS(2020)A review of privacy-preserving techniques for deep learning Neurocomputing 356 183-788
[7]  
Act A(2017)Semantics derived automatically from language corpora contain human-like biases Science 63 743-2537
[8]  
Alawad M(2018)From word to sense embeddings: a survey on vector representations of meaning J Artif Intell Res 12 2493-142865
[9]  
Yoon HJ(2011)Natural language processing (almost) from scratch J Mach Learn Res 7 142855-112
[10]  
Gao S(2019)An efficient and dynamic semantic-aware multikeyword ranked search scheme over encrypted cloud data IEEE Access 1 92-606