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Main Authors: Tan, Bowen, Xu, Zheng, Xing, Eric, Hu, Zhiting, Wu, Shanshan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.12347
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author Tan, Bowen
Xu, Zheng
Xing, Eric
Hu, Zhiting
Wu, Shanshan
author_facet Tan, Bowen
Xu, Zheng
Xing, Eric
Hu, Zhiting
Wu, Shanshan
contents Synthetic data offers a promising path to train models while preserving data privacy. Differentially private (DP) finetuning of large language models (LLMs) as data generator is effective, but is impractical when computation resources are limited. Meanwhile, prompt-based methods such as private evolution depend heavily on the manual prompts, and ineffectively use private information in their iterative data selection process. To overcome these limitations, we propose CTCL (Data Synthesis with ConTrollability and CLustering), a novel framework for generating privacy-preserving synthetic data without extensive prompt engineering or billion-scale LLM finetuning. CTCL pretrains a lightweight 140M conditional generator and a clustering-based topic model on large-scale public data. To further adapt to the private domain, the generator is DP finetuned on private data for fine-grained textual information, while the topic model extracts a DP histogram representing distributional information. The DP generator then samples according to the DP histogram to synthesize a desired number of data examples. Evaluation across five diverse domains demonstrates the effectiveness of our framework, particularly in the strong privacy regime. Systematic ablation validates the design of each framework component and highlights the scalability of our approach.
format Preprint
id arxiv_https___arxiv_org_abs_2503_12347
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Synthesizing Privacy-Preserving Text Data via Finetuning without Finetuning Billion-Scale LLMs
Tan, Bowen
Xu, Zheng
Xing, Eric
Hu, Zhiting
Wu, Shanshan
Computation and Language
Synthetic data offers a promising path to train models while preserving data privacy. Differentially private (DP) finetuning of large language models (LLMs) as data generator is effective, but is impractical when computation resources are limited. Meanwhile, prompt-based methods such as private evolution depend heavily on the manual prompts, and ineffectively use private information in their iterative data selection process. To overcome these limitations, we propose CTCL (Data Synthesis with ConTrollability and CLustering), a novel framework for generating privacy-preserving synthetic data without extensive prompt engineering or billion-scale LLM finetuning. CTCL pretrains a lightweight 140M conditional generator and a clustering-based topic model on large-scale public data. To further adapt to the private domain, the generator is DP finetuned on private data for fine-grained textual information, while the topic model extracts a DP histogram representing distributional information. The DP generator then samples according to the DP histogram to synthesize a desired number of data examples. Evaluation across five diverse domains demonstrates the effectiveness of our framework, particularly in the strong privacy regime. Systematic ablation validates the design of each framework component and highlights the scalability of our approach.
title Synthesizing Privacy-Preserving Text Data via Finetuning without Finetuning Billion-Scale LLMs
topic Computation and Language
url https://arxiv.org/abs/2503.12347