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Does Informativeness Matter? Active Learning for Educational Dialogue Act Classification

Authors :
Tan, Wei
Lin, Jionghao
Lang, David
Chen, Guanliang
Gasevic, Dragan
Du, Lan
Buntine, Wray
Publication Year :
2023

Abstract

Dialogue Acts (DAs) can be used to explain what expert tutors do and what students know during the tutoring process. Most empirical studies adopt the random sampling method to obtain sentence samples for manual annotation of DAs, which are then used to train DA classifiers. However, these studies have paid little attention to sample informativeness, which can reflect the information quantity of the selected samples and inform the extent to which a classifier can learn patterns. Notably, the informativeness level may vary among the samples and the classifier might only need a small amount of low informative samples to learn the patterns. Random sampling may overlook sample informativeness, which consumes human labelling costs and contributes less to training the classifiers. As an alternative, researchers suggest employing statistical sampling methods of Active Learning (AL) to identify the informative samples for training the classifiers. However, the use of AL methods in educational DA classification tasks is under-explored. In this paper, we examine the informativeness of annotated sentence samples. Then, the study investigates how the AL methods can select informative samples to support DA classifiers in the AL sampling process. The results reveal that most annotated sentences present low informativeness in the training dataset and the patterns of these sentences can be easily captured by the DA classifier. We also demonstrate how AL methods can reduce the cost of manual annotation in the AL sampling process.<br />Comment: 12 pages full paper, The 24th International Conference on Artificial Intelligence in Education, AIED 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2304.05578
Document Type :
Working Paper