CLMar 19

A Human-in/on-the-Loop Framework for Accessible Text Generation

arXiv:2603.1887919.1h-index: 2
AI Analysis

This addresses the need for more transparent and inclusive NLP systems for users requiring cognitive accessibility, though it is incremental in combining existing human-in/on-the-loop concepts.

The paper tackles the problem of automatic text simplification for cognitive accessibility by introducing a hybrid framework that integrates human participation into LLM-based generation, resulting in a traceable and auditable process for creating accessible texts.

Plain Language and Easy-to-Read formats in text simplification are essential for cognitive accessibility. Yet current automatic simplification and evaluation pipelines remain largely automated, metric-driven, and fail to reflect user comprehension or normative standards. This paper introduces a hybrid framework that explicitly integrates human participation into LLM-based accessible text generation. Human-in-the-Loop (HiTL) contributions guide adjustments during generation, while Human-on-the-Loop (HoTL) supervision ensures systematic post-generation review. Empirical evidence from user studies and annotated resources is operationalized into (i) checklists aligned with standards, (ii) Event-Condition-Action trigger rules for activating expert oversight, and (iii) accessibility Key Performance Indicators (KPIs). The framework shows how human-centered mechanisms can be encoded for evaluation and reused to provide structured feedback that improves model adaptation. By embedding the human role in both generation and supervision, it establishes a traceable, reproducible, and auditable process for creating and evaluating accessible texts. In doing so, it integrates explainability and ethical accountability as core design principles, contributing to more transparent and inclusive NLP systems.

Foundations

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