Abstract

Students’ evaluation of teaching, for instance, through feedback surveys, constitutes an integral mechanism for quality assurance and enhancement of teaching and learning in higher education. These surveys usually comprise both the Likert scale and free-text responses. Since the discrete Likert scale responses are easy to analyze, they feature more prominently in survey analyses. However, the free-text responses often contain richer, detailed, and nuanced information with actionable insights. Mining these insights is more challenging, as it requires a higher degree of processing by human experts, making the process time-consuming and resource intensive. Consequently, the free-text analyses are often restricted in scale, scope, and impact. To address these issues, we propose a novel automated analysis framework for extracting actionable information from free-text responses to open-ended questions in student feedback questionnaires. By leveraging state-of-the-art supervised machine learning techniques and unsupervised clustering methods, we implemented our framework as a case study to analyze a large-scale dataset of 4400 open-ended responses to the National Student Survey (NSS) at a UK university. These analyses then led to the identification, design, implementation, and evaluation of a series of teaching and learning interventions over a two-year period. The highly encouraging results demonstrate our approach’s validity and broad (national and international) application potential—covering tertiary education, commercial training, and apprenticeship programs, etc., where textual feedback is collected to enhance the quality of teaching and learning.

Highlights

  • Curriculum and testing have a significant impact on the lives and careers of young people

  • The pre-2016 version can be found available online: http://www.bristol.ac.uk/academic-quality/ug/nss/nssqs05-16.html/). This is because, upon manually examining 10% of the free-text responses in our National Student Survey (NSS) dataset, we found that because the NSS questionnaire uses a Likert scale that provides no additional fields for further comments, rather than to discuss new topics the students often used any opportunity for a free-text response to elaborate on their thoughts

  • It can be argued that the teaching interventions were based on Level 6 students’ feedback (NSS involves only Level 6 students), this is a highly interesting result that will be discussed from several aspects

Read more

Summary

Introduction

Curriculum and testing have a significant impact on the lives and careers of young people. The NSS is intended to help students make decisions about where to study and to assist institutions’ planning and quality improvement methods, as well as to offer a measure of public accountability. Despite this systematic collection and analysis of student feedback, the evidence [7,8] suggests that, over the past decade, there has been only an insignificant increase in overall student satisfaction.

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call