AI Navigate

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

arXiv cs.CL / 3/20/2026

📰 NewsIdeas & Deep AnalysisModels & Research

Key Points

  • The paper introduces a hybrid Human-in-the-Loop (HiTL) and Human-on-the-Loop (HoTL) framework to embed human participation into LLM-based accessible text generation.
  • It operationalizes human-centered mechanisms into checklists aligned with accessibility standards, Event-Condition-Action trigger rules for expert oversight, and KPI-based evaluation.
  • Empirical evidence from user studies and annotated resources demonstrates how these mechanisms improve model adaptation, transparency, and accountability in accessible text generation.
  • The framework aims to yield traceable, reproducible, and auditable processes for creating and evaluating accessible texts that align with normative standards.

Abstract

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.