Queloz Matthieu
Institute of Philosophy, University of Bern, Laenggassstrasse 49a, 3012 Bern, Switzerland.
Philos Technol. 2025;38(1):34. doi: 10.1007/s13347-025-00864-x. Epub 2025 Mar 13.
A key assumption fuelling optimism about the progress of Large Language Models (LLMs) in accurately and comprehensively modelling the world is that the truth is : true statements about the world form a whole that is not just , in that it contains no contradictions, but , in that the truths are inferentially interlinked. This holds out the prospect that LLMs might in principle rely on that systematicity to fill in gaps and correct inaccuracies in the training data: consistency and coherence promise to facilitate progress towards in an LLM's representation of the world. However, philosophers have identified compelling reasons to doubt that the truth is systematic across all domains of thought, arguing that in normative domains, in particular, the truth is largely asystematic. I argue that insofar as the truth in normative domains is asystematic, this renders it correspondingly harder for LLMs to make progress, because they cannot then leverage the systematicity of truth. And the less LLMs can rely on the systematicity of truth, the less we can rely on them to do our practical deliberation for us, because the very asystematicity of normative domains requires human agency to play a greater role in practical thought.
一个让人们对大语言模型(LLMs)在准确、全面地模拟世界方面取得进展感到乐观的关键假设是:关于世界的真实陈述构成了一个整体,这个整体不仅(因其不包含矛盾)是一致的,而且(因其真理在推理上相互关联)是连贯的。这意味着大语言模型原则上可能依靠这种系统性来填补训练数据中的空白并纠正不准确之处:一致性和连贯性有望促进大语言模型在世界表征方面朝着[此处缺失内容]取得进展。然而,哲学家们已经找出了令人信服的理由来怀疑真理在所有思想领域都是系统的,他们认为,特别是在规范领域,真理在很大程度上是无系统的。我认为,鉴于规范领域的真理是无系统的,这相应地使得大语言模型更难取得进展,因为它们无法利用真理的系统性。而且大语言模型越不能依靠真理的系统性,我们就越不能依靠它们为我们进行实际思考,因为规范领域的无系统性要求人类能动性在实际思维中发挥更大作用。