历史学家的数字兴奋剂:历史、记忆和历史理论能被人工智能渲染吗?

IF 1.1 2区 历史学 Q1 HISTORY
WULF KANSTEINER
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引用次数: 8

摘要

人工智能正在创造历史。机器学习工具在塑造流行文化中关于过去的图像和故事方面发挥着关键作用。人工智能可能也已经侵入了历史课堂。像GPT-3这样的大型语言模型能够根据简单的自然语言输入生成引人注目的、非抄袭的文本,从而为学生提供了一个以最小的努力生成高质量书面作业的机会。同样,像GPT-3这样的工具可能会彻底改变历史研究,使历史学家和其他处理文本的专业人士能够依赖人工智能生成的中间工作产品,如准确的翻译、摘要和年表。但是,当今的大型语言模型在历史学家高度重视的关键任务上失败了。从结构上讲,他们无法说出真相,也无法通过层层文本追踪信息。更重要的是,他们缺乏道德的自我反思。因此,学术史的书写暂时还需要人的代理。但对于历史理论家来说,大型语言模型可能提供了一个机会来测试关于历史写作本质的基本假设。例如,历史理论家可以定制大型语言模型,编写一系列关于同一事件的描述性、叙事性和自信的历史,从而使他们能够探索历史写作中描述、叙述和论证之间的精确关系。简而言之,通过专门设计的大型语言模型,历史理论家可以进行大规模的写作实验,而这些实验是他们在真正的历史学家身上永远无法付诸实践的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DIGITAL DOPING FOR HISTORIANS: CAN HISTORY, MEMORY, AND HISTORICAL THEORY BE RENDERED ARTIFICIALLY INTELLIGENT?

Artificial intelligence is making history, literally. Machine learning tools are playing a key role in crafting images and stories about the past in popular culture. AI has probably also already invaded the history classroom. Large language models such as GPT-3 are able to generate compelling, non-plagiarized texts in response to simple natural language inputs, thus providing students with an opportunity to produce high-quality written assignments with minimum effort. In a similar vein, tools like GPT-3 are likely to revolutionize historical studies, enabling historians and other professionals who deal in texts to rely on AI-generated intermediate work products, such as accurate translations, summaries, and chronologies. But present-day large language models fail at key tasks that historians hold in high regard. They are structurally incapable of telling the truth and tracking pieces of information through layers of texts. What's more, they lack ethical self-reflexivity. Therefore, for the time being, the writing of academic history will require human agency. But for historical theorists, large language models might offer an opportunity to test basic hypotheses about the nature of historical writing. Historical theorists can, for instance, have customized large language models write a series of descriptive, narrative, and assertive histories about the same events, thereby enabling them to explore the precise relation between description, narration, and argumentation in historical writing. In short, with specifically designed large language models, historical theorists can run the kinds of large-scale writing experiments that they could never put into practice with real historians.

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来源期刊
History and Theory
History and Theory Multiple-
CiteScore
2.00
自引率
9.10%
发文量
36
期刊介绍: History and Theory leads the way in exploring the nature of history. Prominent international thinkers contribute their reflections in the following areas: critical philosophy of history, speculative philosophy of history, historiography, history of historiography, historical methodology, critical theory, and time and culture. Related disciplines are also covered within the journal, including interactions between history and the natural and social sciences, the humanities, and psychology.
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