Abhijit Bhowmik, Noorhozaimi Mohd. Nur, M. Saef, U. Miah, Debajyoti Karmekar
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引用次数: 0
摘要
对教师的绩效进行评估是提高教育质量的一个基本支柱,它可以指导教学实践的发展,营造丰富的学习环境。本研究开创了一种创新方法,在基于方面的框架内利用情感分析来解读学生反馈中蕴含的复杂的情感细微差别。通过将情感分为积极、消极和中性三种类型,我们深入探讨了对教学方面的不同看法,为教育工作者的贡献提供了一幅多面的画卷。通过细致的数据收集、预处理和深度学习情感分析模型,我们将学生的评论剖析为不同的教学方面。随后的情感分析揭示了正面、负面和中性情感。积极情感突出了学生的优势和有效沟通,而消极情感则揭示了需要改进的地方。中性情感提供了背景平衡,形成了教师表现的整体挂毯。所提出的模型在将情绪分为三类方面取得了 86% 的 F1 分数。
Aspect-based Sentiment Analysis Model for Evaluating Teachers' Performance from Students' Feedback
Evaluating teachers' performance is a fundamental pillar of educational enhancement, guiding the evolution of pedagogical practices and fostering enriched learning environments. This study pioneers an innovative approach by harnessing sentiment analysis within an aspect-based framework to decipher the intricate emotional nuances embedded within students' feedback. By categorizing sentiments as positive, negative, and neutral, we delve into the diverse perceptions of teaching aspects, offering a multifaceted portrait of educators' contributions. Through meticulous data collection, preprocessing, and a deep learning sentiment analysis model, we dissected student comments into distinct teaching aspects. The subsequent sentiment analysis unearthed positive, negative, and neutral sentiments. Positive sentiments highlighted strengths and effective communication, while negative sentiments illuminated areas for growth. Neutral sentiments provided contextual equilibrium, forming a holistic tapestry of teachers' performance. The proposed model achieved 86\% F1 score for classifying sentiments into three classes.