Krista Glazewski
2022
Disruptive Talk Detection in Multi-Party Dialogue within Collaborative Learning Environments with a Regularized User-Aware Network
Kyungjin Park
|
Hyunwoo Sohn
|
Wookhee Min
|
Bradford Mott
|
Krista Glazewski
|
Cindy E. Hmelo-Silver
|
James Lester
Proceedings of the 23rd Annual Meeting of the Special Interest Group on Discourse and Dialogue
Accurate detection and appropriate handling of disruptive talk in multi-party dialogue is essential for users to achieve shared goals. In collaborative game-based learning environments, detecting and attending to disruptive talk holds significant potential since it can cause distraction and produce negative learning experiences for students. We present a novel attention-based user-aware neural architecture for disruptive talk detection that uses a sequence dropout-based regularization mechanism. The disruptive talk detection models are evaluated with multi-party dialogue collected from 72 middle school students who interacted with a collaborative game-based learning environment. Our proposed disruptive talk detection model significantly outperforms competitive baseline approaches and shows significant potential for helping to support effective collaborative learning experiences.
Search
Co-authors
- Kyungjin Park 1
- Hyunwoo Sohn 1
- Wookhee Min 1
- Bradford Mott 1
- Cindy E. Hmelo-Silver 1
- show all...