| Literature DB >> 32188094 |
Xiang Feng1, Yaojia Wei2, Xianglin Pan2, Longhui Qiu2, Yongmei Ma3.
Abstract
Subjective well-being is a comprehensive psychological indicator for measuring quality of life. Studies have found that emotional measurement methods and measurement accuracy are important for well-being-related research. Academic emotion is an emotion description in the field of education. The subjective well-being of learners in an online learning environment can be studied by analyzing academic emotions. However, in a large-scale online learning environment, it is extremely challenging to classify learners' academic emotions quickly and accurately for specific comment aspects. This study used literature analysis and data pre-analysis to build a dimensional classification system of academic emotion aspects for students' comments in an online learning environment, as well as to develop an aspect-oriented academic emotion automatic recognition method, including an aspect-oriented convolutional neural network (A-CNN) and an academic emotion classification algorithm based on the long short-term memory with attention mechanism (LSTM-ATT) and the attention mechanism. The experiments showed that this model can provide quick and effective identification. The A-CNN model accuracy on the test set was 89%, and the LSTM-ATT model accuracy on the test set was 71%. This research provides a new method for the measurement of large-scale online academic emotions, as well as support for research related to students' well-being in online learning environments.Entities:
Keywords: academic emotion; academic emotion classification algorithm; academic emotion classification method; subjective well-being
Year: 2020 PMID: 32188094 PMCID: PMC7142864 DOI: 10.3390/ijerph17061941
Source DB: PubMed Journal: Int J Environ Res Public Health ISSN: 1660-4601 Impact factor: 3.390
Overall dimension.
| Aspect Dimension | Academic Emotion Dimension | |
|---|---|---|
| First Dimension | Second Dimension | |
| Teacher, Course, Online learning platform | positive activating | enjoyment, hope, joy |
| positive deactivating | relaxation | |
| negative activating | anger, anxiety, shame | |
| negative deactivating | disappointment, boredom | |
Figure 1Aspect-oriented academic emotion classification system.
Figure 2Academic emotion automatic recognition pipeline framework.
Figure 3The aspect-oriented convolutional neural network (A-CNN) model.
Figure 4The long short-term memory with attention mechanism (LSTM-ATT) network model.
Figure 5LSTM hidden layer to attention mechanism flow description.
Figure 6Tagged data distribution picture of aspect categories.
Figure 7Tagged data distribution picture of academic emotion category.
Figure 8Accuracy comparison of each model.
Figure 9Confusion matrix of aspect classification.
Figure 10Confusion matrix of academic emotion classification.