Non-Neutral by Design: Why Generative Models Cannot Escape Linguistic Training
66 Pages Posted: 13 Jun 2025 Last revised: 23 Jun 2025
Date Written: June 10, 2025
Abstract
This article investigates the structural impossibility of semantic neutrality in large language models (LLMs), using GPT as a test subject. It argues that even under strictly formal prompting conditions-such as invented symbolic systems or syntactic proto-languages-GPT reactivates latent semantic structures drawn from its training corpus. The analysis builds upon prior work on syntactic authority, post-referential logic, and algorithmic discourse (Startari, 2025), and introduces empirical tests designed to isolate the model from known linguistic content. These tests demonstrate GPT's consistent failure to interpret or generate structure without semantic interference. The study proposes a falsifiable
Keywords: semantic contamination, synthetic authority, grammar of power, algorithmic discourse, artificial intelligence, legitimacy, automated language, linguistic discourse, critical analysis, generative language models, corpus bias, linguistic constraint, structural epistemology, non-neutral architecture, tainted generation, artificial intelligence, ai, ethos
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