CLMay 29, 2025

Machine-Facing English: Defining a Hybrid Register Shaped by Human-AI Discourse

arXiv:2505.23035v13 citationsh-index: 2
Originality Synthesis-oriented
AI Analysis

This addresses the problem of designing conversational interfaces and supporting multilingual users by highlighting tensions between efficiency and linguistic richness, though it is incremental in applying existing linguistic theories to AI contexts.

The study identified Machine-Facing English (MFE) as a hybrid register emerging from human-AI interaction, characterized by features like redundant clarity and directive syntax that improve machine execution accuracy but reduce natural fluency.

Machine-Facing English (MFE) is an emergent register shaped by the adaptation of everyday language to the expanding presence of AI interlocutors. Drawing on register theory (Halliday 1985, 2006), enregisterment (Agha 2003), audience design (Bell 1984), and interactional pragmatics (Giles & Ogay 2007), this study traces how sustained human-AI interaction normalizes syntactic rigidity, pragmatic simplification, and hyper-explicit phrasing - features that enhance machine parseability at the expense of natural fluency. Our analysis is grounded in qualitative observations from bilingual (Korean/English) voice- and text-based product testing sessions, with reflexive drafting conducted using Natural Language Declarative Prompting (NLD-P) under human curation. Thematic analysis identifies five recurrent traits - redundant clarity, directive syntax, controlled vocabulary, flattened prosody, and single-intent structuring - that improve execution accuracy but compress expressive range. MFE's evolution highlights a persistent tension between communicative efficiency and linguistic richness, raising design challenges for conversational interfaces and pedagogical considerations for multilingual users. We conclude by underscoring the need for comprehensive methodological exposition and future empirical validation.

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