Flocks of Stochastic Parrots: Differentially Private Prompt Learning for Large Language Models
May 24, 2023 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Haonan Duan, Adam Dziedzic, Nicolas Papernot, Franziska Boenisch
arXiv ID
2305.15594
Category
cs.LG: Machine Learning
Cross-listed
cs.CL,
cs.CR
Citations
96
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Large language models (LLMs) are excellent in-context learners. However, the sensitivity of data contained in prompts raises privacy concerns. Our work first shows that these concerns are valid: we instantiate a simple but highly effective membership inference attack against the data used to prompt LLMs. To address this vulnerability, one could forego prompting and resort to fine-tuning LLMs with known algorithms for private gradient descent. However, this comes at the expense of the practicality and efficiency offered by prompting. Therefore, we propose to privately learn to prompt. We first show that soft prompts can be obtained privately through gradient descent on downstream data. However, this is not the case for discrete prompts. Thus, we orchestrate a noisy vote among an ensemble of LLMs presented with different prompts, i.e., a flock of stochastic parrots. The vote privately transfers the flock's knowledge into a single public prompt. We show that LLMs prompted with our private algorithms closely match the non-private baselines. For example, using GPT3 as the base model, we achieve a downstream accuracy of 92.7% on the sst2 dataset with ($ฮต=0.147, ฮด=10^{-6}$)-differential privacy vs. 95.2% for the non-private baseline. Through our experiments, we also show that our prompt-based approach is easily deployed with existing commercial APIs.
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