A SENTIMENT ANALYSIS-BASED SMARTPHONE APPLICATION TO CONTINUOUSLY ASSESS STUDENTS’ FEEDBACK AND MONITOR THE QUALITY OF COURSES AND THE LEARNING EXPERIENCE IN EDUCATIONAL INSTITUTIONS

Sarah A. ALKHODAİR
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Abstract

The quality of education in a specific educational institution is directly reflected in the outcomes of their system. Higher-quality educational systems continue to deliver better learning experiences to enrolled students and better-developed skills and knowledge. To provide high-quality education, an institution must continually monitor its plans, update its courses’ topics and curriculum, and improve teaching facilities and different learning experiences. Students’ opinions and feedback regarding different aspects of a course and their personal learning experience, if properly gathered and analyzed, can be strong indicators of the quality of that course and help identify the areas of satisfaction and dissatisfaction with that course. Highlighting the strengths and weaknesses of each course helps faculty members put, execute, and evaluate a course quality improvement plan in the following semester. Such valuable students’ feedback and opinions about courses are scattered throughout different social media platforms and managed by different discussion groups, usually students. Thus, gathering honest and freely written comments and opinions in one place is challenging. Furthermore, extracting and analyzing courses’ quality and learning experience-related posts is not a trivial task. This study describes the process of designing and developing a smartphone application utilizing Sentiment Analysis techniques to address the problem of gathering, analyzing, and understanding students’ feedback and comments regarding different aspects of courses quality provided by an educational institution. The project’s primary goal is to benefit from student feedback regarding the institution’s courses to continuously assess and monitor the quality of the courses and the students’ learning experiences. A sample representative dataset of students’ unstructured free-text comments and answers to open-ended questions about five different courses over four consecutive semesters was collected, cleaned, and used to develop and test two sentiment analysis models: Naive Bayes in WEKA and a sentiment lexicon-based model named VADER. To further analyze and assess different aspects of the learning experience and courses along with its overall quality, answers to closed-end questions were also analyzed using the 5-point Likert scale. Preliminary results obtained from evaluating the sentiment analysis models show that the Naïve Bayes model achieved 68.7%, 68.8%, 68.8%, and 68.8%, while the VADER model achieved 72.12%, 72.82%, 72.12%, 71.87%, in terms of accuracy, precision, recall, and F1-score, respectively. Performance testing results of the application show that the maximum usage for the CPU is 44%, for the memory is 119 MB, for sending a request on the network 14.7 KB/s, for receiving a response is 226.5 KB/s, and the maximum energy usage is medium. For stress testing, obtained results show that the application can successfully deal with a maximum of 500 random, fast, and abnormal events. For user acceptance testing, users were surveyed to measure their level of satisfaction with the application using the system usability scale. The results show that 100% of users either agreed or strongly agreed that they would like to use the application and be more engaged in assessing the quality of courses. They also indicated that the application is easy to use, quick, and easy to learn. This paper also highlights various challenges and limitations developers face, along with important recommendations for further improvements and future work directions.
一款基于情感分析的智能手机应用程序,用于持续评估学生的反馈,监控教育机构的课程质量和学习体验
特定教育机构的教育质量直接反映在其制度的成果上。更高质量的教育体系继续为入学学生提供更好的学习体验,并使技能和知识得到更好的发展。为了提供高质量的教育,一个机构必须持续监控其计划,更新课程主题和课程设置,改善教学设施和不同的学习体验。学生对课程的不同方面的意见和反馈以及他们的个人学习经历,如果适当地收集和分析,可以成为该课程质量的有力指标,并有助于确定对该课程满意和不满意的领域。突出每门课程的优点和缺点有助于教师在下个学期制定、执行和评估课程质量改进计划。这些宝贵的学生对课程的反馈和意见分散在不同的社交媒体平台上,由不同的讨论组(通常是学生)管理。因此,在一个地方收集诚实和自由的书面评论和意见是具有挑战性的。此外,提取和分析课程质量和学习经验相关的帖子也不是一件容易的事情。本研究描述了利用情感分析技术设计和开发智能手机应用程序的过程,以解决收集、分析和理解学生对教育机构提供的课程质量的不同方面的反馈和评论的问题。该项目的主要目标是从学生对学校课程的反馈中获益,从而持续评估和监控课程质量和学生的学习体验。收集、整理了学生在连续四个学期中关于五门不同课程的非结构化自由文本评论和开放式问题答案的样本代表性数据集,并用于开发和测试两种情感分析模型:WEKA中的朴素贝叶斯和基于情感词典的VADER模型。为了进一步分析和评估学习经验和课程的不同方面及其整体质量,封闭式问题的答案也使用5点李克特量表进行分析。对情感分析模型的初步评价结果显示,Naïve贝叶斯模型在准确率、精密度、召回率和f1得分方面分别达到68.7%、68.8%、68.8%和68.8%,而VADER模型分别达到72.12%、72.82%、72.12%、71.87%。应用程序的性能测试结果表明,CPU的最大占用率为44%,内存的最大占用率为119mb,在网络上发送请求的最大占用率为14.7 KB/s,接收响应的最大占用率为226.5 KB/s,最大能耗为中等。对于压力测试,获得的结果表明,该应用程序可以成功地处理最多500个随机、快速和异常事件。对于用户验收测试,使用系统可用性量表对用户进行调查,以衡量他们对应用程序的满意程度。结果显示,100%的用户同意或强烈同意他们想要使用该应用程序,并更多地参与评估课程质量。他们还表示,该应用程序易于使用,快速,易于学习。本文还强调了开发人员面临的各种挑战和限制,以及对进一步改进和未来工作方向的重要建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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