TeachPro: Multi-Label Qualitative Teaching Evaluation via Cross-View Graph Synergy and Semantic Anchored Evidence Encoding
Xiangqian Wang, Yifan Jia, Yang Xiang, Yumin Zhang, Yanbin Wang, and Ke Liu

TL;DR
TeachPro introduces a multi-label framework for qualitative teaching evaluation that combines semantic anchors, cross-view graph synergy, and evidence encoding to improve diagnostic accuracy and interpretability.
Contribution
The paper presents a novel multi-label learning framework with a dimension-anchored evidence encoder and cross-view graph synergy network for detailed teaching evaluation.
Findings
Outperforms existing methods in diagnostic granularity.
Provides robust and interpretable multi-dimensional feedback.
Introduces a new benchmark dataset with expert annotations.
Abstract
Standardized Student Evaluation of Teaching often suffer from low reliability, restricted response options, and response distortion. Existing machine learning methods that mine open-ended comments usually reduce feedback to binary sentiment, which overlooks concrete concerns such as content clarity, feedback timeliness, and instructor demeanor, and provides limited guidance for instructional improvement.We propose TeachPro, a multi-label learning framework that systematically assesses five key teaching dimensions: professional expertise, instructional behavior, pedagogical efficacy, classroom experience, and other performance metrics. We first propose a Dimension-Anchored Evidence Encoder, which integrates three core components: (i) a pre-trained text encoder that transforms qualitative feedback annotations into contextualized embeddings; (ii) a prompt module that represents five…
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Taxonomy
TopicsIntelligent Tutoring Systems and Adaptive Learning · Topic Modeling · Advanced Graph Neural Networks
