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arxiv: 2105.07949 · v1 · pith:SQJG36AK · submitted 2021-04-29 · cs.CY · cs.CL

Using Transformers to Provide Teachers with Personalized Feedback on their Classroom Discourse: The TalkMoves Application

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classification cs.CY cs.CL
keywords applicationclassroomdiscourseteachersfeedbackmathematicstalkmovesk-12
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TalkMoves is an innovative application designed to support K-12 mathematics teachers to reflect on, and continuously improve their instructional practices. This application combines state-of-the-art natural language processing capabilities with automated speech recognition to automatically analyze classroom recordings and provide teachers with personalized feedback on their use of specific types of discourse aimed at broadening and deepening classroom conversations about mathematics. These specific discourse strategies are referred to as "talk moves" within the mathematics education community and prior research has documented the ways in which systematic use of these discourse strategies can positively impact student engagement and learning. In this article, we describe the TalkMoves application's cloud-based infrastructure for managing and processing classroom recordings, and its interface for providing teachers with feedback on their use of talk moves during individual teaching episodes. We present the series of model architectures we developed, and the studies we conducted, to develop our best-performing, transformer-based model (F1 = 79.3%). We also discuss several technical challenges that need to be addressed when working with real-world speech and language data from noisy K-12 classrooms.

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Cited by 2 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. Does the TalkMoves Codebook Generalize to One-on-One Tutoring and Multimodal Interaction?

    cs.HC 2026-04 conditional novelty 5.0

    TalkMoves shows higher inter-rater reliability (k=0.74) than a hybrid codebook (k=0.64) but lower coverage and usability when applied to one-on-one tutoring across modalities, with both struggling on nonverbal elements.

  2. Supporting Tutors in the Gig Economy with Automated Feedback: A Case Study on Ringle

    cs.HC 2026-06 unverdicted novelty 4.0

    Tutors on Ringle found automated feedback useful for self-monitoring but perceived it more negatively than learner feedback, with discrepancies causing confusion.