学生学习经验中的情感分析

Obinna Uchenna Obeleagu, Yusuf Aleshinloye Abass, Steve A. Adeshina
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引用次数: 3

摘要

由于数据的模糊性、数量和不规则性,预测学生成绩的任务变得更加具有挑战性。这些因素与学生的情绪、态度以及学生对讲师的感知等人为因素相结合,形成了学习环境中的“主体性”。该设计旨在通过利用机器学习算法和方法来消除学生学习体验中的“主观性”。本文建立在现有技术的基础上,旨在对其进行改进。通过将属性集中的学术变量和社会变量结合起来,在这方面取得了成功。这些变量将在很大程度上提高学生的表现和成功率,并广泛地解释学生学习指标的组成部分及其特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis In Student Learning Experience
The task of predicting students’ performance has become more challenging due to the obscurity, volume, and irregularities of data. These factors compounded with the human element of mood and altitudes of the student and the perception of the lecturers by the students have brought about “SUBJECTIVITY” in the learning environment. This design seeks to eliminate “SUBJECTIVITY” in Student Learning Experience by leveraging on machine Learning algorithms & Methodology. This paper builds on existing techniques and aims to improve upon them. Success was achieved in this regard by combining academic and social variables in the attribute set. These variables will go a long way in improving student performance and success rates as well an explaining extensively the components of a student learning metric and its features.
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