UPDF AI

Scalable Extraction of Training Data from (Production) Language Models

Milad Nasr,Nicholas Carlini,7 Authors,Katherine Lee

2023 · DOI: 10.48550/arXiv.2311.17035
arXiv.org · 441 Citations

TLDR

In order to attack the aligned ChatGPT, a new divergence attack is developed that causes the model to diverge from its chatbot-style generations and emit training data at a rate 150x higher than when behaving properly.

Abstract

This paper studies extractable memorization: training data that an adversary can efficiently extract by querying a machine learning model without prior knowledge of the training dataset. We show an adversary can extract gigabytes of training data from open-source language models like Pythia or GPT-Neo, semi-open models like LLaMA or Falcon, and closed models like ChatGPT. Existing techniques from the literature suffice to attack unaligned models; in order to attack the aligned ChatGPT, we develop a new divergence attack that causes the model to diverge from its chatbot-style generations and emit training data at a rate 150x higher than when behaving properly. Our methods show practical attacks can recover far more data than previously thought, and reveal that current alignment techniques do not eliminate memorization.