LGCLCRMLOct 13, 2021

Differentially Private Fine-tuning of Language Models

arXiv:2110.06500v2504 citations
Originality Incremental advance
AI Analysis

This work addresses privacy concerns in fine-tuning language models for NLP tasks, offering improved methods that are incremental but impactful for applications requiring data confidentiality.

The paper tackles the problem of differentially private fine-tuning of large language models by proposing simpler, sparser, and faster algorithms that achieve state-of-the-art privacy-utility tradeoffs, with results such as 87.8% accuracy on MNLI using RoBERTa-Large at ε=6.7, close to the non-private 90.2%.

We give simpler, sparser, and faster algorithms for differentially private fine-tuning of large-scale pre-trained language models, which achieve the state-of-the-art privacy versus utility tradeoffs on many standard NLP tasks. We propose a meta-framework for this problem, inspired by the recent success of highly parameter-efficient methods for fine-tuning. Our experiments show that differentially private adaptations of these approaches outperform previous private algorithms in three important dimensions: utility, privacy, and the computational and memory cost of private training. On many commonly studied datasets, the utility of private models approaches that of non-private models. For example, on the MNLI dataset we achieve an accuracy of $87.8\%$ using RoBERTa-Large and $83.5\%$ using RoBERTa-Base with a privacy budget of $ε= 6.7$. In comparison, absent privacy constraints, RoBERTa-Large achieves an accuracy of $90.2\%$. Our findings are similar for natural language generation tasks. Privately fine-tuning with DART, GPT-2-Small, GPT-2-Medium, GPT-2-Large, and GPT-2-XL achieve BLEU scores of 38.5, 42.0, 43.1, and 43.8 respectively (privacy budget of $ε= 6.8,δ=$ 1e-5) whereas the non-private baseline is $48.1$. All our experiments suggest that larger models are better suited for private fine-tuning: while they are well known to achieve superior accuracy non-privately, we find that they also better maintain their accuracy when privacy is introduced.

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