Differentially Private Learning Needs Better Model Initialization and Self-Distillation

October 23, 2024 ยท Declared Dead ยท ๐Ÿ› North American Chapter of the Association for Computational Linguistics

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Authors Ivoline C. Ngong, Joseph P. Near, Niloofar Mireshghallah arXiv ID 2410.17566 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.CL, cs.CR Citations 2 Venue North American Chapter of the Association for Computational Linguistics Last Checked 4 months ago
Abstract
Differentially private SGD (DPSGD) enables privacy-preserving training of language models, but often reduces utility, diversity, and linguistic quality. We introduce DPRefine, a three-phase method that initializes a model using data synthesis from a small pre-trained LM with rigorous filtering, applies DP finetuning on private data, and performs self-distillation to refine outputs. This approach significantly outperforms vanilla DPSGD, with AlpacaEval preferring DPRefine's generations in 78.4% of cases across all datasets. Our analysis reveals that DPRefine reduces linguistic errors in generated text by 84.0%, mitigating grammar and spelling errors, commonly associated with DPSGD. It also reduces inconsistencies of non-private models, such as hallucinated details and misattributed quotes. We find that small models like GPT-2 can be effective for initialization and distillation, highlighting their potential in enabling scalable and efficient deployment of privacy-preserving language.
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