Linguistic Control in AI Text Generation: An Accessible Prompt-Based Approach Targeting L2 Spanish Absolute Beginners

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Bibliographic Details
Title: Linguistic Control in AI Text Generation: An Accessible Prompt-Based Approach Targeting L2 Spanish Absolute Beginners
Language: English
Authors: Raúl Getino-Diez (ORCID 0009-0005-8862-8445), Mikel García-Madariaga (ORCID 0009-0009-4796-1224)
Source: Technology in Language Teaching & Learning. 2026 8.
Availability: Castledown Publishers. Ground Level, 470 St Kilda Road, Melbourne, 3004, Australia. Tel: +61-3-7003-8355; e-mail: contact@castledown.com; Web site: https://www.castledown.com/journals/tltl
Peer Reviewed: Y
Page Count: 21
Publication Date: 2026
Document Type: Journal Articles
Reports - Research
Descriptors: Second Language Learning, Spanish, Novices, Artificial Intelligence, Linguistics, Technology Uses in Education
ISSN: 2652-1687
Abstract: Generative artificial intelligence (AI) offers strong potential for developing customized second language learning materials and tools. However, generating texts for absolute beginners which require strict lexical and grammatical control remains a challenge. Although controlled text generation (CTG) techniques exist, they often require technical expertise and infrastructure, limiting accessibility for educators. This study evaluates, in the context of Spanish, a prompt-based approach that leverages large language models (LLMs) without fine-tuning or specialized tools. Prompts enforce linguistic constraints defined in two attachments: a categorized Spanish vocabulary list, and a set of example sentences illustrating approved Spanish grammatical structures organized by communicative function. Three variables were manipulated: "AI model" (ChatGPT-4o vs. Claude 3.5 Sonnet), "prompt type" (standard vs. extended, with constraint-enhancing techniques), and "attachment format" (rich-heavyweight vs. lightweight JSON). A secondary variable, "text type" (city descriptions, personal introductions, and dialogues), was also examined. A total of 720 texts were generated, 30 per condition. Measures included proportions of non-compliant lexical and grammatical items, user-perceived latency, and errors in vocabulary, grammar, and coherence. Model choice was the primary driver of constraint adherence, with Claude 3.5 Sonnet outperforming ChatGPT-4o. Extended prompts improved adherence across models. Attachment format showed no systematic effect on adherence, but JSON significantly reduced latency and response-time variability. Text type also influenced adherence, and error rates remained low. Findings offer educators a scalable, low-barrier solution for generating tailored beginner-level Spanish materials and AI-powered tools using LLMs, along with insights into how different design choices affect performance. This approach, transferable to other languages, provides a practical alternative to resource-intensive CTG techniques, addressing a critical gap in AI-assisted language education.
Abstractor: As Provided
Entry Date: 2026
Accession Number: EJ1501451
Database: ERIC
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