Liang Ziyu, Chen Jun
School of Education, Guizhou Normal University, Guiyang, China.
PeerJ Comput Sci. 2024 May 15;10:e2029. doi: 10.7717/peerj-cs.2029. eCollection 2024.
The number of online self-learning users has been increasing due to the promotion of various lifelong learning programs. Unstructured commentary text related to their real learning experience regarding the learning process is generally published by users to show their opinions and complaints. The article aims to utilize the dataset of real text comments of 10 high school mathematics courses participated by high school students in the Bilibili platform and construct a hybrid algorithm called the Artificial Intelligence-Bidirectional Encoder Representations from Transformers (BERT) + Bidirectional Gated Recurrent Unit (BiGRU) and linear discriminant analysis (LDA) to crunch data and extract their sentiments. A series of tests regarding algorithm comparison were conducted on the educational review datasets. Comparative analysis found that the proposed algorithm achieves higher precision and lower loss rates than other alternative algorithms. Meanwhile, the loss ratio of the proposed algorithm was kept at a low level. At the topic mining level, the topic clustering of negative comments found that the barrage content was very messy and the complexity of the course content was generally reported by the students. Some problems related to videos were also mentioned. The outcomes are promising that the fundamental issues underlined by the students can be effectively resolved to improve curriculum and teaching quality.
由于各种终身学习项目的推广,在线自主学习用户数量一直在增加。用户通常会发布与他们在学习过程中的真实学习体验相关的非结构化评论性文本,以表达他们的意见和抱怨。本文旨在利用哔哩哔哩平台上高中生参与的10门高中数学课程的真实文本评论数据集,构建一种名为人工智能-双向编码器表征(BERT)+双向门控循环单元(BiGRU)和线性判别分析(LDA)的混合算法,对数据进行处理并提取其中的情感。针对教育评论数据集进行了一系列算法比较测试。对比分析发现,所提出的算法比其他替代算法具有更高的精度和更低的损失率。同时,所提出算法的损失率保持在较低水平。在主题挖掘层面,负面评论的主题聚类发现,弹幕内容非常杂乱,学生普遍反映课程内容复杂。还提到了一些与视频相关的问题。这些结果很有前景,学生所强调的基本问题能够得到有效解决,从而提高课程和教学质量。