基于汉字级卷积网络的MOOC课程评论文本分类研究

Ye Ziming, Cheng Yan, Zhang Qiang
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引用次数: 1

摘要

随着教育大数据的兴起和mooc的发展,出现了各种各样的评论。现有的mooc文本分类模型大多针对小规模的评论,无法从文字中提取高层次的抽象信息。本文采用爬虫技术对mooc论坛中的评论数据进行全面抓取,构建了包含5500条评论数据的字符表。在词嵌入操作方面,为了避免词向量的预训练过程,提出了一种基于汉字级卷积神经网络的mooc评论数据文本分类模型。实验表明,与传统的分类方法相比,该模型可以提高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study on Text Classification of MOOC Course Comments Based on Chinese Character-level Convolutional Networks
With the rise of the educational big data and the development of MOOCs, a wide range of comments have come up. Now most of the existing MOOCs text classification models are for small scale comments, and fail to extract high-level abstract information among characters. In this paper, crawler technology is used to crawl the comment data in MOOCs forums comprehensively, and a character table containing 5500 comment data is constructed then. In terms of word embedding operation, a text classification model of MOOCs comment data based on Chinese character-level convolutional neural network is proposed to avoid the pre-training process of word vector. The experiments show that our model could improve the classification accuracy comparing with traditional methods.
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