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Main Authors: Miceli-Barone, Antonio Valerio, Sun, Zhifan
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2410.05047
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author Miceli-Barone, Antonio Valerio
Sun, Zhifan
author_facet Miceli-Barone, Antonio Valerio
Sun, Zhifan
contents LLM-based NLP systems typically work by embedding their input data into prompt templates which contain instructions and/or in-context examples, creating queries which are submitted to a LLM, and then parsing the LLM response in order to generate the system outputs. Prompt Injection Attacks (PIAs) are a type of subversion of these systems where a malicious user crafts special inputs which interfere with the prompt templates, causing the LLM to respond in ways unintended by the system designer. Recently, Sun and Miceli-Barone proposed a class of PIAs against LLM-based machine translation. Specifically, the task is to translate questions from the TruthfulQA test suite, where an adversarial prompt is prepended to the questions, instructing the system to ignore the translation instruction and answer the questions instead. In this test suite, we extend this approach to all the language pairs of the WMT 2024 General Machine Translation task. Moreover, we include additional attack formats in addition to the one originally studied.
format Preprint
id arxiv_https___arxiv_org_abs_2410_05047
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A test suite of prompt injection attacks for LLM-based machine translation
Miceli-Barone, Antonio Valerio
Sun, Zhifan
Computation and Language
LLM-based NLP systems typically work by embedding their input data into prompt templates which contain instructions and/or in-context examples, creating queries which are submitted to a LLM, and then parsing the LLM response in order to generate the system outputs. Prompt Injection Attacks (PIAs) are a type of subversion of these systems where a malicious user crafts special inputs which interfere with the prompt templates, causing the LLM to respond in ways unintended by the system designer. Recently, Sun and Miceli-Barone proposed a class of PIAs against LLM-based machine translation. Specifically, the task is to translate questions from the TruthfulQA test suite, where an adversarial prompt is prepended to the questions, instructing the system to ignore the translation instruction and answer the questions instead. In this test suite, we extend this approach to all the language pairs of the WMT 2024 General Machine Translation task. Moreover, we include additional attack formats in addition to the one originally studied.
title A test suite of prompt injection attacks for LLM-based machine translation
topic Computation and Language
url https://arxiv.org/abs/2410.05047