Skip to main content
Back

Nlp

2 results across all content

Publications (1)

2021Conference

Through the Looking Glass: Learning to Attribute Synthetic Text Generated by Language Models

European Chapter of the Association for Computational Linguistics(EACL) · 25% acceptance

Shaoor Munir, Brishna Batool, Zubair Shafiq, Padmini Srinivasan, Fareed Zaffar

TL;DR:We can attribute AI-generated text to its source language model with 91-98% accuracy using subtle stylistic signatures.

Given the potential misuse of recent advances in synthetic text generation by language models (LMs), it is important to have the capacity to attribute authorship of synthetic text. While stylometric organic (i.e., human written) authorship attribution has been quite successful, it is unclear whether similar approaches can be used to attribute a synthetic text to its source LM. We address this question with the key insight that synthetic texts carry subtle distinguishing marks inherited from their source LM and that these marks can be leveraged by machine learning (ML) algorithms for attribution. We propose and test several ML-based attribution methods. Our best attributor built using a fine-tuned version of XLNet (XLNet-FT) consistently achieves excellent accuracy scores (91% to near perfect 98%) in terms of attributing the parent pre-trained LM behind a synthetic text. Our experiments show promising results across a range of experiments where the synthetic text may be generated using pre-trained LMs, fine-tuned LMs, or by varying text generation parameters.

Talks (1)

Attribution of Text Generated by Language Models

EACL 2021 · April 2021

Presenting machine learning methods to attribute synthetic text to its source language model, achieving 91-98% accuracy in identifying the parent pre-trained LM behind generated text.

Watch/Listen →
Nlp Research & Content | Shaoor Munir