Current State in Privacy-Preserving Text Preprocessing for Domain-Agnostic NLP
By: Abhirup Sinha, Pritilata Saha, Tithi Saha
Potential Business Impact:
Keeps your private words safe from AI.
Privacy is a fundamental human right. Data privacy is protected by different regulations, such as GDPR. However, modern large language models require a huge amount of data to learn linguistic variations, and the data often contains private information. Research has shown that it is possible to extract private information from such language models. Thus, anonymizing such private and sensitive information is of utmost importance. While complete anonymization may not be possible, a number of different pre-processing approaches exist for masking or pseudonymizing private information in textual data. This report focuses on a few of such approaches for domain-agnostic NLP tasks.
Similar Papers
A Study of Privacy-preserving Language Modeling Approaches
Computation and Language
Keeps private words safe from smart computer programs.
A Survey on Current Trends and Recent Advances in Text Anonymization
Computation and Language
Keeps private text private, even with smart AI.
Privacy Preservation in Gen AI Applications
Cryptography and Security
Keeps your private info safe from smart computer programs.