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Main Authors: Khomsky, Daniil, Maloyan, Narek, Nutfullin, Bulat
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.14048
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author Khomsky, Daniil
Maloyan, Narek
Nutfullin, Bulat
author_facet Khomsky, Daniil
Maloyan, Narek
Nutfullin, Bulat
contents Large language models play a crucial role in modern natural language processing technologies. However, their extensive use also introduces potential security risks, such as the possibility of black-box attacks. These attacks can embed hidden malicious features into the model, leading to adverse consequences during its deployment. This paper investigates methods for black-box attacks on large language models with a three-tiered defense mechanism. It analyzes the challenges and significance of these attacks, highlighting their potential implications for language processing system security. Existing attack and defense methods are examined, evaluating their effectiveness and applicability across various scenarios. Special attention is given to the detection algorithm for black-box attacks, identifying hazardous vulnerabilities in language models and retrieving sensitive information. This research presents a methodology for vulnerability detection and the development of defensive strategies against black-box attacks on large language models.
format Preprint
id arxiv_https___arxiv_org_abs_2406_14048
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Prompt Injection Attacks in Defended Systems
Khomsky, Daniil
Maloyan, Narek
Nutfullin, Bulat
Computation and Language
Large language models play a crucial role in modern natural language processing technologies. However, their extensive use also introduces potential security risks, such as the possibility of black-box attacks. These attacks can embed hidden malicious features into the model, leading to adverse consequences during its deployment. This paper investigates methods for black-box attacks on large language models with a three-tiered defense mechanism. It analyzes the challenges and significance of these attacks, highlighting their potential implications for language processing system security. Existing attack and defense methods are examined, evaluating their effectiveness and applicability across various scenarios. Special attention is given to the detection algorithm for black-box attacks, identifying hazardous vulnerabilities in language models and retrieving sensitive information. This research presents a methodology for vulnerability detection and the development of defensive strategies against black-box attacks on large language models.
title Prompt Injection Attacks in Defended Systems
topic Computation and Language
url https://arxiv.org/abs/2406.14048