Exploring Scaling Trends in LLM Robustness

@misc{howe2024effectsscalelanguagemodel,      

title={Effects of Scale on Language Model Robustness},      

author={Nikolaus Howe and Ian McKenzie and Oskar Hollinsworth and Michał Zajac and Tom Tseng and Aaron Tucker and Pierre-Luc Bacon and Adam Gleave},      

year={2024},      

eprint={2407.18213},      

archivePrefix={arXiv},      

primaryClass={cs.LG},      

url={https://arxiv.org/abs/2407.18213}, }

July 25, 2024

Niki Howe

Michał Zając

Oskar Hollinsworth

Tom Tseng

Pierre-Luc Bacon

Adam Gleave

Ian McKenzie

Abstract

Language model capabilities predictably improve from scaling a model`s size and training data. Motivated by this, increasingly large language models have been trained, yielding an array of impressive capabilities. Yet these models are vulnerable to adversarial prompts, such as "jailbreaks" that hijack models to perform undesired behaviors, posing a significant risk of misuse. Prior work indicates that computer vision models become more robust with model and data scaling, raising the question: does language model robustness also improve with scale? We study this question empirically, finding that larger models respond substantially better to adversarial training, but there is little to no benefit from model scale in the absence of explicit defenses.

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