运用情感分析识别学生情绪状态,避免网络学习中的辍学

Míria L. D. R. Bóbó, Fernanda Campos, Victor Stroele, José Maria N. David, R. Braga, Tiago Timponi Torrent
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引用次数: 1

摘要

辍学是一个长期脱离社会的过程,会产生社会和经济后果。能够更早地预测学生的行为可以最大限度地减少他们的失败和脱离。本文介绍了基于词法方法和极化框架网络的SASys体系结构。它的主要目标是定义作者在文本中的情绪,并通过添加作者的信息和偏好来增加检测句子情绪状态的自信。作者的情绪状态从虚拟学习环境的短语提取开始;然后,在文本中应用预处理技术,将文本提交到复杂框架网络中,识别具有极性的单词和作者的文本情感。流结束于作者情绪状态的识别。通过案例分析,将情感分析方法应用于学生的辍学问题,对该提案进行了评估。研究结果表明,该建议对学生情绪状态的断言和学生辍学风险的检测是可行的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Sentiment Analysis to Identify Student Emotional State to Avoid Dropout in E-Learning
Dropping out of school comes from a long-term disengagement process with social and economic consequences. Being able to predict students' behavior earlier can minimize their failures and disengagement. This article presents the SASys architecture, based on a lexical approach and a polarized frame network. Its main goal is to define the author's sentiment in texts and increase the assertiveness of detecting the sentence's emotional state by adding authors' information and preferences. The author's emotional state begins with the phrase extraction from Virtual Learning Environments; then, pre-processing techniques are applied in the text, which is submitted to the complex frame network to identify words with polarity and the author's text sentiment. The flow ends with the identification of the author's emotional state. The proposal was evaluated by a case study, applying the Sentiment Analysis approach to the students' school dropout problem. The results point to the feasibility of the proposal for asserting the student's emotional state and detection of students' risks of dropout.
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