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Main Authors: Zhuo, Anyuan, Ning, Xuefei, Li, Ningyuan, Zhu, Jingyi, Wang, Yu, Lu, Pinyan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2510.14365
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author Zhuo, Anyuan
Ning, Xuefei
Li, Ningyuan
Zhu, Jingyi
Wang, Yu
Lu, Pinyan
author_facet Zhuo, Anyuan
Ning, Xuefei
Li, Ningyuan
Zhu, Jingyi
Wang, Yu
Lu, Pinyan
contents This work investigates the resilience of contemporary large language models (LLMs) against frequent character-level perturbations. We examine three types of character-level perturbations including introducing numerous typos within words, shuffling the characters in each word, and inserting a large number of invisible characters into the text. Surprisingly, even under severe perturbation, such as shuffling nearly all words character-wise to produce text that is almost unreadable to humans, or inserting invisible characters which are several times more than the visible ones as noise, many LLMs still maintain notable performance. We explore the underlying causes of this robustness and find that LLMs exhibit remarkable resilience to chaotic segmentation and fragmented tokenization. Furthermore, we examine the mechanisms by which LLMs remove perturbations to correctly comprehend text, including both implicit and explicit mechanisms for character-level perturbation. We hope that our findings on the low-level robustness of LLMs will unveil their inherent architectural strengths, reveal the potential risks of their misuse, and inform the reliable deployment of LLMs across diverse application scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2510_14365
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Understanding the Ability of LLMs to Handle Character-Level Perturbation
Zhuo, Anyuan
Ning, Xuefei
Li, Ningyuan
Zhu, Jingyi
Wang, Yu
Lu, Pinyan
Computation and Language
This work investigates the resilience of contemporary large language models (LLMs) against frequent character-level perturbations. We examine three types of character-level perturbations including introducing numerous typos within words, shuffling the characters in each word, and inserting a large number of invisible characters into the text. Surprisingly, even under severe perturbation, such as shuffling nearly all words character-wise to produce text that is almost unreadable to humans, or inserting invisible characters which are several times more than the visible ones as noise, many LLMs still maintain notable performance. We explore the underlying causes of this robustness and find that LLMs exhibit remarkable resilience to chaotic segmentation and fragmented tokenization. Furthermore, we examine the mechanisms by which LLMs remove perturbations to correctly comprehend text, including both implicit and explicit mechanisms for character-level perturbation. We hope that our findings on the low-level robustness of LLMs will unveil their inherent architectural strengths, reveal the potential risks of their misuse, and inform the reliable deployment of LLMs across diverse application scenarios.
title Understanding the Ability of LLMs to Handle Character-Level Perturbation
topic Computation and Language
url https://arxiv.org/abs/2510.14365