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Main Authors: Jhilal, Soufiane, Pasqua, Eleonora, Marchesi, Caterina, Corradi, Riccardo, Galletti, Martina
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.28370
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author Jhilal, Soufiane
Pasqua, Eleonora
Marchesi, Caterina
Corradi, Riccardo
Galletti, Martina
author_facet Jhilal, Soufiane
Pasqua, Eleonora
Marchesi, Caterina
Corradi, Riccardo
Galletti, Martina
contents Neurodiverse learners often require reading supports, yet increasing scaffold richness can sometimes overload attention and working memory rather than improve comprehension. Grounded in the Construction-Integration model and a contingent scaffolding perspective, we examine how structural versus semantic scaffolds shape comprehension and reading experience in a supervised inclusive context. Using an adapted reading interface, we compared four modalities: unmodified text, sentence-segmented text, segmented text with pictograms, and segmented text with pictograms plus keyword labels. In a within-subject pilot with 14 primary-school learners with special educational needs and disabilities, we measured reading comprehension using standardized questions and collected brief child- and therapist-reported experience measures alongside open-ended feedback. Results highlight heterogeneous responses as some learners showed patterns consistent with benefits from segmentation and pictograms, while others showed patterns consistent with increased coordination costs when visual scaffolds were introduced. Experience ratings showed limited differences between modalities, with some apparent effects linked to clinical complexity, particularly for perceived ease of understanding. Open-ended feedback of the learners frequently requested simpler wording and additional visual supports. These findings suggest that no single scaffold is universally optimal, reinforcing the need for calibrated, adjustable scaffolding and provide design implications for human-AI co-regulation in supervised inclusive reading contexts.
format Preprint
id arxiv_https___arxiv_org_abs_2603_28370
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Tailoring AI-Driven Reading Scaffolds to the Distinct Needs of Neurodiverse Learners
Jhilal, Soufiane
Pasqua, Eleonora
Marchesi, Caterina
Corradi, Riccardo
Galletti, Martina
Computation and Language
Human-Computer Interaction
Neurodiverse learners often require reading supports, yet increasing scaffold richness can sometimes overload attention and working memory rather than improve comprehension. Grounded in the Construction-Integration model and a contingent scaffolding perspective, we examine how structural versus semantic scaffolds shape comprehension and reading experience in a supervised inclusive context. Using an adapted reading interface, we compared four modalities: unmodified text, sentence-segmented text, segmented text with pictograms, and segmented text with pictograms plus keyword labels. In a within-subject pilot with 14 primary-school learners with special educational needs and disabilities, we measured reading comprehension using standardized questions and collected brief child- and therapist-reported experience measures alongside open-ended feedback. Results highlight heterogeneous responses as some learners showed patterns consistent with benefits from segmentation and pictograms, while others showed patterns consistent with increased coordination costs when visual scaffolds were introduced. Experience ratings showed limited differences between modalities, with some apparent effects linked to clinical complexity, particularly for perceived ease of understanding. Open-ended feedback of the learners frequently requested simpler wording and additional visual supports. These findings suggest that no single scaffold is universally optimal, reinforcing the need for calibrated, adjustable scaffolding and provide design implications for human-AI co-regulation in supervised inclusive reading contexts.
title Tailoring AI-Driven Reading Scaffolds to the Distinct Needs of Neurodiverse Learners
topic Computation and Language
Human-Computer Interaction
url https://arxiv.org/abs/2603.28370