How user language affects conflict fatality estimates in ChatGPT

IF 3.4 1区 社会学 Q1 INTERNATIONAL RELATIONS
Christoph Valentin Steinert, Daniel Kazenwadel
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Abstract

OpenAI’s ChatGPT language model has gained popularity as a powerful tool for problem-solving and information retrieval. However, concerns arise about the reproduction of biases present in the language-specific training data. In this study, we address this issue in the context of the Israeli–Palestinian and Turkish–Kurdish conflicts. Using GPT-3.5, we employed an automated query procedure to inquire about casualties in specific airstrikes, in both Hebrew and Arabic for the former conflict and Turkish and Kurdish for the latter. Our analysis reveals that GPT-3.5 provides 34 ± 11% lower fatality estimates when queried in the language of the attacker than in the language of the targeted group. Evasive answers denying the existence of such attacks further increase the discrepancy. A simplified analysis on the current GPT-4 model shows the same trends. To explain the origin of the bias, we conducted a systematic media content analysis of Arabic news sources. The media analysis suggests that the large-language model fails to link specific attacks to the corresponding fatality numbers reported in the Arabic news. Due to its reliance on co-occurring words, the large-language model may provide death tolls from different attacks with greater news impact or cumulative death counts that are prevalent in the training data. Given that large-language models may shape information dissemination in the future, the language bias identified in our study has the potential to amplify existing biases along linguistic dyads and contribute to information bubbles.
用户语言如何影响 ChatGPT 中的冲突死亡率估计值
OpenAI 的 ChatGPT 语言模型作为解决问题和信息检索的强大工具,已经广受欢迎。然而,人们担心特定语言训练数据中存在的偏差会再现。在本研究中,我们将在以色列-巴勒斯坦冲突和土耳其-库尔德冲突的背景下解决这一问题。使用 GPT-3.5,我们采用了自动查询程序来查询特定空袭中的伤亡情况,前者使用希伯来语和阿拉伯语,后者使用土耳其语和库尔德语。我们的分析表明,GPT-3.5 用攻击者的语言提供的死亡率估计值比用目标群体的语言提供的低 34 ± 11%。否认存在此类攻击的回避答案进一步加大了差异。对当前 GPT-4 模型的简化分析显示了相同的趋势。为了解释偏差的根源,我们对阿拉伯语新闻来源进行了系统的媒体内容分析。媒体分析表明,大语言模型无法将具体的袭击事件与阿拉伯语新闻中报道的相应死亡人数联系起来。由于依赖于共现词,大语言模型可能会提供新闻影响更大的不同袭击事件的死亡人数,或在训练数据中普遍存在的累积死亡人数。鉴于大语言模型可能会影响未来的信息传播,我们研究中发现的语言偏差有可能会放大语言对偶方面的现有偏差,并造成信息泡沫。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
6.70
自引率
5.60%
发文量
80
期刊介绍: Journal of Peace Research is an interdisciplinary and international peer reviewed bimonthly journal of scholarly work in peace research. Edited at the International Peace Research Institute, Oslo (PRIO), by an international editorial committee, Journal of Peace Research strives for a global focus on conflict and peacemaking. From its establishment in 1964, authors from over 50 countries have published in JPR. The Journal encourages a wide conception of peace, but focuses on the causes of violence and conflict resolution. Without sacrificing the requirements for theoretical rigour and methodological sophistication, articles directed towards ways and means of peace are favoured.
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