Reasoning Robustness of LLMs to Adversarial Typographical Errors

ACL ARR 2024 June Submission4733 Authors

16 Jun 2024 (modified: 09 Aug 2024)ACL ARR 2024 June SubmissionEveryoneRevisionsBibTeXCC BY 4.0
Abstract: Large Language Models (LLMs) have demonstrated impressive capabilities in reasoning using Chain-of-Thought (CoT) prompting. However, CoT can be biased by users' instruction. In this work, we study the reasoning robustness of LLMs to typographical errors, which can naturally occur in users' queries. We design an Adversarial Typo Attack ($\texttt{ATA}$) algorithm that iteratively samples typos for words that are important to the query and selects the edit that is most likely to succeed in attacking. It shows that LLMs are sensitive to minimal adversarial typographical changes. Notably, with 1 character edit, Mistral-7B's accuracy drops from 43.7\% to 38.6\% on GSM8K, while with 8 character edits the performance further drops to 19.2\%. To extend our evaluation to larger and closed-source LLMs, we develop the $\texttt{R$^2$ATA}$ benchmark, which assesses models' $\underline{R}$easoning $\underline{R}$obustness to $\underline{\texttt{ATA}}$. It includes adversarial typographical questions derived from three widely-used reasoning datasets—GSM8K, BBH, and MMLU—by applying $\texttt{ATA}$ to open-source LLMs. $\texttt{R$^2$ATA}$ demonstrates remarkable transferability and causes notable performance drops across multiple super large and closed-source LLMs.
Paper Type: Long
Research Area: Resources and Evaluation
Research Area Keywords: Large Language Models, Reasoning, Robustness, Adversarial Attack
Languages Studied: English
Submission Number: 4733
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