Bültmann & Gerriets
How to Make Sense of Statistics
von Stephen Gorard
Verlag: SAGE Publications
E-Book / EPUB
Kopierschutz: Adobe DRM


Speicherplatz: 5 MB
Hinweis: Nach dem Checkout (Kasse) wird direkt ein Link zum Download bereitgestellt. Der Link kann dann auf PC, Smartphone oder E-Book-Reader ausgeführt werden.
E-Books können per PayPal bezahlt werden. Wenn Sie E-Books per Rechnung bezahlen möchten, kontaktieren Sie uns bitte.

ISBN: 978-1-5297-5586-2
Auflage: 1. Auflage
Erschienen am 10.02.2021
Sprache: Englisch
Umfang: 296 Seiten

Preis: 44,99 €

Biografische Anmerkung
Inhaltsverzeichnis

Stephen Gorard is Professor of Education and Public Policy, and Director of the Evidence Centre for Education, at Durham University (https://www.dur.ac.uk/). He is a Fellow of the Academy of Social Sciences, member of the ESRC Commissioning Panel for the Research Methods Programme, the British Academy grants panel, and Lead Editor for BERA's Review of Education. He is a member of the Cabinet Office Trials Advice Panel as part of the Prime Minister's Implementation Unit.
His work concerns the robust evaluation of education as a lifelong process, focused on issues of equity, especially regarding school intakes. He is author of around 30 books and over 1,000 other publications. He is currently funded by Nesta to evaluate their EdTech Testbed, and by the British Academy to look at the impact of schooling in India and Pakistan.



Part I: Introduction
Chapter 1: Why we use numbers in research
Chapter 2: What is a number?: Issues of measurement
Part II: Basic analyses
Chapter 3: Working with one variable
Chapter 4: Working with tables of categorical variables
Chapter 5: Examining differences between real numbers
Chapter 6: Significance tests: how to conduct them and what they do not mean
Chapter 7: Significance tests: why we should not report them
Part III: Advanced issues for analysis
Chapter 8: The role of judgement in analysis
Chapter 9: Research designs
Chapter 10: Sampling and populations
Chapter 11: What is randomness?
Chapter 12: Handling missing data: The importance of what we don't know
Chapter 13: Handling missing data: more complex issues
Part IV: Modelling with data
Chapter 14: Errors in measurements
Chapter 15: Correlating two real numbers
Chapter 16: Predicting measurements using simple linear regression
Chapter 17: Predicting measurements using multiple linear regression
Chapter 18: Assumptions and limitations in regression
Chapter 19: Predicting outcomes using logistic regression
Chapter 20: Data reduction techniques
Part V: Conclusion
Chapter 21: Presenting data for your audience


andere Formate