Reading comprehension requires strategic and metacognitive support provided by guided reading methodologies through structured, scaffolded interaction. However, enacting these methodologies systematically at scale remains challenging, particularly in digital contexts. Recent advances in Large Language Models (LLMs) open new opportunities, though existing approaches largely rely on unstructured dialogue and implicit pedagogical control. In this paper, we present CLAIRE, a teacher-configurable framework that operationalizes guided reading by decomposing the pedagogical procedure into four components, i.e., phases, interaction moves, assessment criteria, and transition logic, authored by teachers and executed at runtime through a structured multi-agent dialogue controller. Experimental evaluation shows that CLAIRE can faithfully enact a teacher-defined guided reading methodology and is perceived by teachers as pedagogically meaningful and useful, supporting the scalable adoption of structured reading instruction with LLMs. Code and data are available at https://github.com/softlab-unimore/Claire.

CLAIRE: A Controllable LLM Tutoring Framework for Reading Comprehension / Magurno, C., Contalbo, M.L., Paganelli, M., Giliberti, E., Bertolini, C., Guerra, F.. - 16582:(2026), pp. 49-63. (27th International Conference on Artificial Intelligence in Education, AIED 2026 Seoul, korea 2026) [10.1007/978-3-032-29755-6_4].

CLAIRE: A Controllable LLM Tutoring Framework for Reading Comprehension

Magurno C.
;
Contalbo M. L.
;
Paganelli M.;Giliberti E.;Bertolini C.;Guerra F.
2026

Abstract

Reading comprehension requires strategic and metacognitive support provided by guided reading methodologies through structured, scaffolded interaction. However, enacting these methodologies systematically at scale remains challenging, particularly in digital contexts. Recent advances in Large Language Models (LLMs) open new opportunities, though existing approaches largely rely on unstructured dialogue and implicit pedagogical control. In this paper, we present CLAIRE, a teacher-configurable framework that operationalizes guided reading by decomposing the pedagogical procedure into four components, i.e., phases, interaction moves, assessment criteria, and transition logic, authored by teachers and executed at runtime through a structured multi-agent dialogue controller. Experimental evaluation shows that CLAIRE can faithfully enact a teacher-defined guided reading methodology and is perceived by teachers as pedagogically meaningful and useful, supporting the scalable adoption of structured reading instruction with LLMs. Code and data are available at https://github.com/softlab-unimore/Claire.
2026
27th International Conference on Artificial Intelligence in Education, AIED 2026
Seoul, korea
2026
16582
49
63
Magurno, C.; Contalbo, M. L.; Paganelli, M.; Giliberti, E.; Bertolini, C.; Guerra, F.
CLAIRE: A Controllable LLM Tutoring Framework for Reading Comprehension / Magurno, C., Contalbo, M.L., Paganelli, M., Giliberti, E., Bertolini, C., Guerra, F.. - 16582:(2026), pp. 49-63. (27th International Conference on Artificial Intelligence in Education, AIED 2026 Seoul, korea 2026) [10.1007/978-3-032-29755-6_4].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1413462
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