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Rambow, Owen; Wanner, Leo; Apidianaki, Marianna; Al-Khalifa, Hend; Di_Eugenio, Barbara; Schockaert, Steven (Ed.)Human tutoring interventions play a crucial role in supporting student learning, improving academic performance, and promoting personal growth. This paper focuses on analyzing mathematics tutoring discourse using talk moves—a framework of dialogue acts grounded in Accountable Talk theory. However, scaling the collection, annotation, and analysis of extensive tutoring dialogues to develop machine learning models is a challenging and resource-intensive task. To address this, we present SAGA22, a compact dataset, and explore various modeling strategies, including dialogue context, speaker information, pretraining datasets, and further fine-tuning. By leveraging existing datasets and models designed for classroom teaching, our results demonstrate that supplementary pretraining on classroom data enhances model performance in tutoring settings, particularly when incorporating longer context and speaker information. Additionally, we conduct extensive ablation studies to underscore the challenges in talk move modeling.more » « lessFree, publicly-accessible full text available January 19, 2026
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Cao, J; Suresh, A; Jacobs, J; Clevenger, C E; Howard, A; Summer, T; Brown, C; Milne, B; Fischaber, T; Sumner, T; et al (, Association for Computational Linguistics)Rambow, Owen; Wanner, Owen; Apidianaki, Marianna; Al-Khalifa, Hend; Di_Eugenio, Barbara; Schockaert, Steven (Ed.)Human tutoring interventions play a crucial role in supporting student learning, improving academic performance, and promoting personal growth. This paper focuses on analyzing mathematics tutoring discourse using talk moves—a framework of dialogue acts grounded in Accountable Talk theory. However, scaling the collection, annotation, and analysis of extensive tutoring dialogues to develop machine learning models is a challenging and resource-intensive task. To address this, we present SAGA22, a compact dataset, and explore various modeling strategies, including dialogue context, speaker information, pretraining datasets, and further fine-tuning. By leveraging existing datasets and models designed for classroom teaching, our results demonstrate that supplementary pretraining on classroom data enhances model performance in tutoring settings, particularly when incorporating longer context and speaker information. Additionally, we conduct extensive ablation studies to underscore the challenges in talk move modeling.more » « lessFree, publicly-accessible full text available January 19, 2026
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Cao, J; Suresh, A; Jacobs, J; Clevenger, C; Howard, A; Summer, T; Brown, C; Milne, B; Fischaber, T; Sumner, T; et al (, Association for Computational Linguistics)Free, publicly-accessible full text available January 6, 2026
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