CLMar 6

Tutor Move Taxonomy: A Theory-Aligned Framework for Analyzing Instructional Moves in Tutoring

arXiv:2603.05778v1h-index: 3
Predicted impact top 70% in CL · last 90 daysOriginality Incremental advance
AI Analysis

This taxonomy provides a systematic method for analyzing tutoring dialogue, enabling large-scale analysis and computational modeling of tutoring strategies for researchers and educators.

This paper introduces a tutor move taxonomy, a structured annotation framework for categorizing tutors' instructional actions during one-on-one sessions, developed through a hybrid deductive-inductive process. It organizes tutoring behaviors into four categories: tutoring support, learning support, social-emotional and motivational support, and logistical support, with learning support further detailed by student engagement levels.

Understanding what makes tutoring effective requires methods for systematically analyzing tutors' instructional actions during learning interactions. This paper presents a tutor move taxonomy designed to support large-scale analysis of tutoring dialogue within the National Tutoring Observatory. The taxonomy provides a structured annotation framework for labeling tutors' instructional moves during one-on-one tutoring sessions. We developed the taxonomy through a hybrid deductive-inductive process. First, we synthesized research from cognitive science, the learning sciences, classroom discourse analysis, and intelligent tutoring systems to construct a preliminary framework of tutoring moves. We then refined the taxonomy through iterative coding of authentic tutoring transcripts conducted by expert annotators with extensive instructional and qualitative research experience. The resulting taxonomy organizes tutoring behaviors into four categories: tutoring support, learning support, social-emotional and motivational support, and logistical support. Learning support moves are further organized along a spectrum of student engagement, distinguishing between moves that elicit student reasoning and those that provide direct explanation or answers. By defining tutoring dialogue in terms of discrete instructional actions, the taxonomy enables scalable annotation using AI, computational modeling of tutoring strategies, and empirical analysis of how tutoring behaviors relate to learning outcomes.

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