基于图深度学习的汉语二语学习者动态词汇增长网络模型

Gang Cao, Yi Liang, Ruo Lin, Miao Wang, Juan Xu
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引用次数: 0

摘要

本文将不同层次汉语学习者掌握的词汇网络作为汉语词共现网络的子图,借助tsminer模型和Order Embedding算法等图深度学习技术对这些子图进行嵌入,构建学习者的动态词汇增长网络模型。该模型可以预测节点和节点之间的联系,模拟学习者词汇的增长过程,从而为学习者提供指导。有了这个模型,在学习平台上流畅、高效、动态的自适应词汇学习过程成为可能。通过问卷调查和数据分析,验证了模型的有效性,参与的汉语教师与模型推荐的单词学习顺序有很大的一致性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Chinese L2 Learners' Dynamic Vocabulary Growth Network Model Based on Graph Deep Learning
This paper regards vocabulary networks mastered by Chinese second language(L2) learners at different levels as sub graphs of a Chinese Word Co-occurrence Network, embeds these subgraphs with the help of graph deep learning techniques such as TSPMiner model and Order Embedding algorithm, and builds a dynamic vocabulary growth network model for the learners. This model can predict nodes and links between nodes, simulate the growth process of a learner vocabulary, so as to offer guidance to learners. With this model, a smooth, efficient, and dynamic adaptive vocabulary learning process becomes possible on learning platforms. Through a questionnaire and data analysis on it, the model is verified in that participating Chinese teachers have great consistency with model recommended word learning sequences.
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