利用递归神经网络对英语语言学生进行心理和心理健康评估

Guo Jun
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引用次数: 0

摘要

心理健康在教育环境中至关重要,被认为是影响教师行为和学生学习成绩的重要因素。及时准确地识别心理健康问题有助于早期干预和启动康复过程。传统的评估方法主观性强、耗时长,且面临各种挑战。本研究采用循环神经网络(RNN)来评估英语语言专业学生的心理状况。RNNs 使用长短期记忆(LSTM)层来捕捉语言中的长期依赖关系,并开发出一种稳健高效的模型,通过学生的英语书面和口语来评估他们的心理健康状况。RNN 架构由几个部分组成。首先,它有一个嵌入层,将单词转换成固定大小的密集向量。接着,两个堆叠 LSTM 层处理这些向量,并从序列中捕捉上下文信息,然后是全连接密集层,将 LSTM 输出转换为心理健康评分。最后,输出层中的sigmoid激活函数对心理状态进行分类,如压力迹象或无压力迹象。本研究的数据包括英语学习者的作文、课堂讨论和互动。数据经过标记化、词法化和删除停滞词等预处理。为了证明 RNN 在预测英语语言学生心理健康方面的性能,我们将其与支持向量机 (SVM)、人工神经网络 (ANN) 和随机森林 (RF) 等不同的先进算法在准确度、精确度、召回率和 F1 分数方面进行了比较。结果表明,在预测压力、焦虑和动机水平方面,该算法的准确性比其前辈更高,从而可以制定更好的教学策略,提高学习效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Psychological and Mental Health Evaluation of English Language Students using Recurrent Neural Networks

Psychological and Mental Health Evaluation of English Language Students using Recurrent Neural Networks

Psychological health is crucial in educational settings and recognized as a significant feature in structuring behavior of teachers and learning outcomes of students. Timely and accurate identification of mental health issues aids in early intervention and initiation of the recovery process. Traditional assessment methods are subjective, time-consuming and faced different challenges. This study uses Recurrent Neural Networks (RNNs) to evaluate the psychological condition of students of English language. RNNs uses Long Short-Term Memory (LSTM) layers to capture long-term dependencies in language and develop a robust and efficient model that assesses students' psychological well-being through their written and spoken English. The RNN architecture is composed of several components. Firstly, it has an embedding layer that converts words into dense vectors of fixed size. Next, two stacked LSTM layers process these vectors and capture contextual information from the sequences followed by fully connected dense layers which transform LSTM outputs into psychological health scores. Finally, a sigmoid activation function in the output layer classifies the psychological state such as signs of stress or no stress. The data for this study includes essays, classroom discussions and interactions from English language learners. The data is preprocessed with tokenization, lemmatization and removal of stop words. To demonstrate the performance of RNN in forecasting English language student’s mental health it is compared with different state of the art algorithms like Support Vector Machine (SVM), Artificial Neural Networks (ANN) and Random Forests (RF) in terms of accuracy, precision, recall, and F1-score. The results show high accuracy in predicting stress, anxiety and motivation levels outperforming its predecessors and leading to better teaching strategies and improved learning outcomes.

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