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Knowledge Unlearning for Mitigating Privacy Risks in Language Models

2022-10-04Code Available1· sign in to hype

Joel Jang, Dongkeun Yoon, Sohee Yang, Sungmin Cha, Moontae Lee, Lajanugen Logeswaran, Minjoon Seo

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Abstract

Pretrained Language Models (LMs) memorize a vast amount of knowledge during initial pretraining, including information that may violate the privacy of personal lives and identities. Previous work addressing privacy issues for language models has mostly focused on data preprocessing and differential privacy methods, both requiring re-training the underlying LM. We propose knowledge unlearning as an alternative method to reduce privacy risks for LMs post hoc. We show that simply performing gradient ascent on target token sequences is effective at forgetting them with little to no degradation of general language modeling performances for larger LMs; it sometimes even substantially improves the underlying LM with just a few iterations. We also find that sequential unlearning is better than trying to unlearn all the data at once and that unlearning is highly dependent on which kind of data (domain) is forgotten. By showing comparisons with a previous data preprocessing method and a decoding method known to mitigate privacy risks for LMs, we show that unlearning can give a stronger empirical privacy guarantee in scenarios where the data vulnerable to extraction attacks are known a priori while being much more efficient and robust. We release the code and dataset needed to replicate our results at https://github.com/joeljang/knowledge-unlearning.

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Benchmark Results

DatasetModelMetricClaimedVerifiedStatus
The PileGPT-Neo 2.7BTest perplexity10.44Unverified
The PileGPT-Neo 1.3BTest perplexity11.46Unverified
The PileOPT 2.7BTest perplexity17.81Unverified
The PileGPT-Neo 125MTest perplexity17.83Unverified
The PileOPT 1.3BTest perplexity19.55Unverified
The PileOPT 125MTest perplexity32.26Unverified

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