The End of Prediction? AI Technologies in a No-Analog World

IF 0.3 3区 文学 0 LITERATURE
Luke Munn
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引用次数: 0

Abstract

Abstract: AI technologies mine past data to anticipate future events, and yet our world of environmental and political crisis ushers in unprecedented conditions. Mixing examples of operational environments (AI in the oil and gas industry) with insights from media, cultural, and environmental studies, this article explores this grappling with uncertainty. To manage uncertainty, companies strive to internalize the complexity and contingency of the real world, collecting more data, designing more accurate sensors, and developing more exhaustive models. And yet prediction is a fraught exercise that struggles with correlation versus causation, the epistemological outside (the unknown), and the ontological outside (the open-endedness of the future). In addition, technology’s role in accelerating and intensifying the destructive logics of capital contributes to more volatile planetary conditions, undermining the stability and continuity that prediction requires. The article thus argues that, at a fundamental level, a highly fluid future will increasingly frustrate any meaningful degree of prediction. Keywords: prediction, knowledge, AI, machine learning, uncertainty, climate change
预测的终结?无模拟世界中的AI技术
摘要:人工智能技术挖掘过去的数据来预测未来的事件,然而我们的环境和政治危机世界迎来了前所未有的条件。本文结合了运营环境(石油和天然气行业中的人工智能)的例子,以及媒体、文化和环境研究的见解,探讨了如何应对不确定性。为了管理不确定性,公司努力将现实世界的复杂性和偶然性内在化,收集更多的数据,设计更精确的传感器,开发更详尽的模型。然而,预测是一项令人担忧的工作,需要与相关性与因果关系、外部认识论(未知)和外部本体论(未来的开放性)作斗争。此外,技术在加速和强化资本的破坏性逻辑方面所起的作用,导致地球条件更加不稳定,破坏了预测所需的稳定性和连续性。因此,这篇文章认为,在基本层面上,高度不稳定的未来将日益阻碍任何有意义的预测。关键词:预测,知识,人工智能,机器学习,不确定性,气候变化
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
SUB-STANCE
SUB-STANCE LITERATURE-
CiteScore
0.20
自引率
0.00%
发文量
21
期刊介绍: SubStance has a long-standing reputation for publishing innovative work on literature and culture. While its main focus has been on French literature and continental theory, the journal is known for its openness to original thinking in all the discourses that interact with literature, including philosophy, natural and social sciences, and the arts. Join the discerning readers of SubStance who enjoy crossing borders and challenging limits.
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