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Analysing Student Feedback in Higher Education: Using Text-Mining to Interpret the Student Voice [Kõva köide]

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  • Formaat: Hardback, 222 pages, kõrgus x laius: 234x156 mm, kaal: 453 g, 36 Tables, black and white; 5 Line drawings, black and white; 23 Halftones, black and white; 28 Illustrations, black and white
  • Ilmumisaeg: 30-Dec-2021
  • Kirjastus: Routledge
  • ISBN-10: 0367678381
  • ISBN-13: 9780367678388
  • Formaat: Hardback, 222 pages, kõrgus x laius: 234x156 mm, kaal: 453 g, 36 Tables, black and white; 5 Line drawings, black and white; 23 Halftones, black and white; 28 Illustrations, black and white
  • Ilmumisaeg: 30-Dec-2021
  • Kirjastus: Routledge
  • ISBN-10: 0367678381
  • ISBN-13: 9780367678388
Analysing Student Feedback in Higher Education provides an in-depth analysis of mining student feedback that goes beyond numerical measures of student satisfaction or engagement. By including authentic student voices for understanding the student experience, this book will inform strategies for quality improvement in higher education globally.

With contributions, representing an international community of academics, educational developers, institutional data analysts and student-researchers, this book reflects on the role of computer-aided text analysis in gaining insight of student views. The chapters explore the applications of text-mining in different forms, these include varied institutional contexts, using a range of instruments and pursuing different institutional aims and objectives. Contributors provide insights enabled by computer-aided analysis in distilling the student voice and turning large volumes of data into useful information and knowledge to inform actions. Practical tips and core principles are explored to assist academic institutions when embarking on analysing qualitative student feedback.

Written for a wide audience, Analysing Student Feedback in Higher Education provides those making informed decisions about how to approach analyses of large volumes of student narratives, with the benefit of learning from the experiences of those who already started treading this path. It enables academic developers, institutional researchers, academics, and administrators to see how bringing text mining to their institutions can help them in better understanding and using the student voice to improve practice.
Preface viii
Contributor bios x
1 Discovering student experience: beyond numbers through words
1(16)
Elena Zaitseva
Elizabeth Santhanam
Beatrice Tucker
PART I Exploring collective student voice: approaches, tools and institutional insights
17(52)
2 Automating insights: analysing the National Student Survey data using NVivo
19(18)
Steve Wright
3 You articulate, we implement: adding constructive feedback coaching and automated text analysis in the course evaluation loop
37(14)
Yao Wu
Graham Dawson
4 Using structural topic modelling to estimate gender bias in student evaluations of teaching
51(18)
Marshall A. Taylor
Ya Su
Kevin Barry
Sarah A. Mustillo
PART II Listening to diversity of student voices
69(50)
5 Guiding institutional analysis of diversity with coded comments
71(14)
Jason Leman
6 Can you hear me now? Unmuting diverse student voices in Irish higher education
85(17)
Angela Short
7 One voice? Investigating diversity in written student feedback
102(17)
Natalie Holland
Elena Zaitseva
PART III Looking across the student journey
119(46)
8 Can text analytics improve prospective student engagement?
121(12)
Robert Downie
Michel Rivard
9 Mining employability narratives: from semantic analysis to institutional strategy
133(16)
Elena Zaitseva
Chris Finn
10 Accessing the student voice: Australia's CEQuery project
149(16)
Geoff Scott
PART IV Informing actionable insights and ethical approaches to decision-making
165(53)
11 From anonymous student feedback to impactful strategies for institutional direction
167(13)
Elizabeth Santhanam
Bernardine Lynch
Jeffrey Jones
Justin Davis
12 Supporting practical use and understanding of student evaluations of teaching through text analytics design, policies, and practices
180(12)
Gregory Hum
Brad Wuetherick
Yeona Jang
13 Freeing the free-text comment: exploring ethical text mining in the higher education sector
192(13)
Jill R. D. MacKay
14 Future directions and challenges in text analytics
205(13)
Beatrice Tucker
Elizabeth Santhanam
Elena Zaitseva
Index 218
Elena Zaitseva is the Academic Research and Development Officer at the Teaching and Learning Academy, Liverpool John Moores University, UK.

Beatrice Tucker is the Evaluation Lead for the School of Medicine, University of Western Australia.

Elizabeth Santhanam is an Associate Professor and Evaluation Coordinator in the Learning and Teaching Centre, Australian Catholic University.