How to Build More Generalizable Models for Collaboration Quality? Lessons Learned from Exploring Multi-Context Audio-Log Datasets using Multimodal Learning Analytics

被引:10
作者
Chejara, Pankaj [1 ]
Prieto, Luis P. [1 ]
Rodriguez-Triana, Maria Jesus [1 ]
Ruiz-Calleja, Adolfo [1 ]
Kasepalu, Reet [1 ]
Shankar, Shashi Kant [1 ]
机构
[1] Tallinn Univ, Tallinn, Estonia
来源
THIRTEENTH INTERNATIONAL CONFERENCE ON LEARNING ANALYTICS & KNOWLEDGE, LAK2023 | 2022年
关键词
MultiModal Learning Analytics; Machine Learning; Collaboration Quality; Generalizability; SUPPORT; SPEECH; DESIGN;
D O I
10.1145/3576050.3576144
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Multimodal learning analytics (MMLA) research for building collaboration quality estimation models has shown significant progress. However, the generalizability of such models is seldom addressed. In this paper, we address this gap by systematically evaluating the across-context generalizability of collaboration quality models developed using a typical MMLA pipeline. This paper further presents a methodology to explore modelling pipelines with different configurations to improve the generalizability of the model. We collected 11 multimodal datasets (audio and log data) from face-to-face collaborative learning activities in six different classrooms with five different subject teachers. Our results showed that the models developed using the often-employed MMLA pipeline degraded in terms of Kappa from Fair (.20 < Kappa <.40) to Poor (Kappa <.20) when evaluated across contexts. This degradation in performance was significantly ameliorated with pipelines that emerged as high-performing from our exploration of 32 pipelines. Furthermore, our exploration of pipelines provided statistical evidence that often-overlooked contextual data features improve the generalizability of a collaboration quality model. With these findings, we make recommendations for the modelling pipeline which can potentially help other researchers in achieving better generalizability in their collaboration quality estimation models.
引用
收藏
页码:111 / 121
页数:11
相关论文
共 34 条
[11]   MEASUREMENT OF OBSERVER AGREEMENT FOR CATEGORICAL DATA [J].
LANDIS, JR ;
KOCH, GG .
BIOMETRICS, 1977, 33 (01) :159-174
[12]   Collaborative Learning Quality Classification Through Physiological Synchrony Recorded by Wearable Biosensors [J].
Liu, Yang ;
Wang, Tingting ;
Wang, Kun ;
Zhang, Yu .
FRONTIERS IN PSYCHOLOGY, 2021, 12
[13]   Multimodal Learning Analytics to Inform Learning Design: Lessons Learned from Computing Education [J].
Mangaroska, Katerina ;
Sharma, Kshitij ;
Gasevic, Dragan ;
Giannakos, Michalis .
JOURNAL OF LEARNING ANALYTICS, 2020, 7 (03) :79-97
[14]  
Martinez R, 2011, LECT NOTES ARTIF INT, V6738, P196, DOI 10.1007/978-3-642-21869-9_27
[16]   Capturing and analyzing verbal and physical collaborative learning interactions at an enriched interactive tabletop [J].
Martinez-Maldonado, Roberto ;
Dimitriadis, Yannis ;
Martinez-Mones, Alejandra ;
Kay, Judy ;
Yacef, Kalina .
INTERNATIONAL JOURNAL OF COMPUTER-SUPPORTED COLLABORATIVE LEARNING, 2013, 8 (04) :455-485
[18]   Predicting Participation Styles using Co-occurrence Patterns of Nonverbal Behaviors in Collaborative Learning [J].
Nakano, Yukiko I. ;
Nihonyanagi, Sakiko ;
Takase, Yutaka ;
Hayashi, Yuki ;
Okada, Shogo .
ICMI'15: PROCEEDINGS OF THE 2015 ACM INTERNATIONAL CONFERENCE ON MULTIMODAL INTERACTION, 2015, :91-98
[19]  
Pedregosa F, 2011, J MACH LEARN RES, V12, P2825
[20]  
Ponce-Lopez Victor, 2013, Multi-modal social signal analysis for predicting agreement in conversation settings