CLLGOct 19, 2022

Attribution and Obfuscation of Neural Text Authorship: A Data Mining Perspective

arXiv:2210.10488v458 citationsh-index: 18
Originality Synthesis-oriented
AI Analysis

It addresses privacy concerns for texts generated by AI, which is incremental as it builds on traditional authorship methods.

The paper surveys the problem of attributing and obfuscating authorship for neural texts, reviewing recent literature to understand limitations and identify research directions.

Two interlocking research questions of growing interest and importance in privacy research are Authorship Attribution (AA) and Authorship Obfuscation (AO). Given an artifact, especially a text t in question, an AA solution aims to accurately attribute t to its true author out of many candidate authors while an AO solution aims to modify t to hide its true authorship. Traditionally, the notion of authorship and its accompanying privacy concern is only toward human authors. However, in recent years, due to the explosive advancements in Neural Text Generation (NTG) techniques in NLP, capable of synthesizing human-quality open-ended texts (so-called "neural texts"), one has to now consider authorships by humans, machines, or their combination. Due to the implications and potential threats of neural texts when used maliciously, it has become critical to understand the limitations of traditional AA/AO solutions and develop novel AA/AO solutions in dealing with neural texts. In this survey, therefore, we make a comprehensive review of recent literature on the attribution and obfuscation of neural text authorship from a Data Mining perspective, and share our view on their limitations and promising research directions.

Foundations

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