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Hauptverfasser: Choi, Eujeong, Jeong, Younghun, Kim, Soomin, Cho, Won Ik
Format: Preprint
Veröffentlicht: 2025
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Online-Zugang:https://arxiv.org/abs/2501.17715
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author Choi, Eujeong
Jeong, Younghun
Kim, Soomin
Cho, Won Ik
author_facet Choi, Eujeong
Jeong, Younghun
Kim, Soomin
Cho, Won Ik
contents User interactions with conversational agents (CAs) evolve in the era of heavily guardrailed large language models (LLMs). As users push beyond programmed boundaries to explore and build relationships with these systems, there is a growing concern regarding the potential for unauthorized access or manipulation, commonly referred to as "jailbreaking." Moreover, with CAs that possess highly human-like qualities, users show a tendency toward initiating intimate sexual interactions or attempting to tame their chatbots. To capture and reflect these in-the-wild interactions into chatbot designs, we propose RICoTA, a Korean red teaming dataset that consists of 609 prompts challenging LLMs with in-the-wild user-made dialogues capturing jailbreak attempts. We utilize user-chatbot conversations that were self-posted on a Korean Reddit-like community, containing specific testing and gaming intentions with a social chatbot. With these prompts, we aim to evaluate LLMs' ability to identify the type of conversation and users' testing purposes to derive chatbot design implications for mitigating jailbreaking risks. Our dataset will be made publicly available via GitHub.
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institution arXiv
publishDate 2025
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spellingShingle RICoTA: Red-teaming of In-the-wild Conversation with Test Attempts
Choi, Eujeong
Jeong, Younghun
Kim, Soomin
Cho, Won Ik
Computation and Language
User interactions with conversational agents (CAs) evolve in the era of heavily guardrailed large language models (LLMs). As users push beyond programmed boundaries to explore and build relationships with these systems, there is a growing concern regarding the potential for unauthorized access or manipulation, commonly referred to as "jailbreaking." Moreover, with CAs that possess highly human-like qualities, users show a tendency toward initiating intimate sexual interactions or attempting to tame their chatbots. To capture and reflect these in-the-wild interactions into chatbot designs, we propose RICoTA, a Korean red teaming dataset that consists of 609 prompts challenging LLMs with in-the-wild user-made dialogues capturing jailbreak attempts. We utilize user-chatbot conversations that were self-posted on a Korean Reddit-like community, containing specific testing and gaming intentions with a social chatbot. With these prompts, we aim to evaluate LLMs' ability to identify the type of conversation and users' testing purposes to derive chatbot design implications for mitigating jailbreaking risks. Our dataset will be made publicly available via GitHub.
title RICoTA: Red-teaming of In-the-wild Conversation with Test Attempts
topic Computation and Language
url https://arxiv.org/abs/2501.17715