Exploring Active Learning for Student Behavior Classification

Selection of high-quality ground truth data is a critical step for machine learning. Conventionally, a human-centered strategy is utilized to label the data. While this technique provides accurate annotations of task-specific behaviors, it is difficult, costly and error-prone. One method explored to...

全面介紹

Saved in:
書目詳細資料
Main Authors: Dumdumaya, Cristina E, Paredes, Yance Vance M, Rodrigo, Ma. Mercedes T
格式: text
出版: Archīum Ateneo 2019
主題:
在線閱讀:https://archium.ateneo.edu/discs-faculty-pubs/164
https://dl.acm.org/doi/abs/10.1145/3323771.3323807
標簽: 添加標簽
沒有標簽, 成為第一個標記此記錄!
實物特徵
總結:Selection of high-quality ground truth data is a critical step for machine learning. Conventionally, a human-centered strategy is utilized to label the data. While this technique provides accurate annotations of task-specific behaviors, it is difficult, costly and error-prone. One method explored to solve these problems is active learning, a model-centered approach that minimizes human involvement. In this work, we conduct an experiment to compare the performance of active learning and passive learning strategies in selecting ground truth data for a classification task to detect the incidence of task persistent behavior from students' interaction logs. Our findings suggest that active learning tends to be more effective and efficient than passive learning in achieving a certain level of performance. However, the overall performance comparison shows that passive selection for ground truth data is as effective as the active learning approach for applications with relatively small sample size.