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Main Authors: Ma, Zilin, Susannah, Su, Zhao, Nathan, Bieske, Linn, Bullwinkel, Blake, Zhang, Yanyi, Sophia, Yang, Luo, Ziqing, Li, Siyao, Liao, Gekai, Wang, Boxiang, Gao, Jinglun, Wen, Zihan, Bruderlein, Claude, Pan, Weiwei
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2405.20195
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author Ma, Zilin
Susannah
Su
Zhao, Nathan
Bieske, Linn
Bullwinkel, Blake
Zhang, Yanyi
Sophia
Yang
Luo, Ziqing
Li, Siyao
Liao, Gekai
Wang, Boxiang
Gao, Jinglun
Wen, Zihan
Bruderlein, Claude
Pan, Weiwei
author_facet Ma, Zilin
Susannah
Su
Zhao, Nathan
Bieske, Linn
Bullwinkel, Blake
Zhang, Yanyi
Sophia
Yang
Luo, Ziqing
Li, Siyao
Liao, Gekai
Wang, Boxiang
Gao, Jinglun
Wen, Zihan
Bruderlein, Claude
Pan, Weiwei
contents Humanitarian negotiations in conflict zones, called \emph{frontline negotiation}, are often highly adversarial, complex, and high-risk. Several best-practices have emerged over the years that help negotiators extract insights from large datasets to navigate nuanced and rapidly evolving scenarios. Recent advances in large language models (LLMs) have sparked interest in the potential for AI to aid decision making in frontline negotiation. Through in-depth interviews with 13 experienced frontline negotiators, we identified their needs for AI-assisted case analysis and creativity support, as well as concerns surrounding confidentiality and model bias. We further explored the potential for AI augmentation of three standard tools used in frontline negotiation planning. We evaluated the quality and stability of our ChatGPT-based negotiation tools in the context of two real cases. Our findings highlight the potential for LLMs to enhance humanitarian negotiations and underscore the need for careful ethical and practical considerations.
format Preprint
id arxiv_https___arxiv_org_abs_2405_20195
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Using Large Language Models for Humanitarian Frontline Negotiation: Opportunities and Considerations
Ma, Zilin
Susannah
Su
Zhao, Nathan
Bieske, Linn
Bullwinkel, Blake
Zhang, Yanyi
Sophia
Yang
Luo, Ziqing
Li, Siyao
Liao, Gekai
Wang, Boxiang
Gao, Jinglun
Wen, Zihan
Bruderlein, Claude
Pan, Weiwei
Human-Computer Interaction
Humanitarian negotiations in conflict zones, called \emph{frontline negotiation}, are often highly adversarial, complex, and high-risk. Several best-practices have emerged over the years that help negotiators extract insights from large datasets to navigate nuanced and rapidly evolving scenarios. Recent advances in large language models (LLMs) have sparked interest in the potential for AI to aid decision making in frontline negotiation. Through in-depth interviews with 13 experienced frontline negotiators, we identified their needs for AI-assisted case analysis and creativity support, as well as concerns surrounding confidentiality and model bias. We further explored the potential for AI augmentation of three standard tools used in frontline negotiation planning. We evaluated the quality and stability of our ChatGPT-based negotiation tools in the context of two real cases. Our findings highlight the potential for LLMs to enhance humanitarian negotiations and underscore the need for careful ethical and practical considerations.
title Using Large Language Models for Humanitarian Frontline Negotiation: Opportunities and Considerations
topic Human-Computer Interaction
url https://arxiv.org/abs/2405.20195