A practical guide to quantitative methods with SPSS
Version 2 2020-05-04, 08:31
Version 1 2019-11-20, 09:31
preprint
posted on 2020-05-04, 08:31 authored by Ylva B AlmquistYlva B Almquist, Signild Kvart, Lars BrännströmThe purpose of this guide is to provide both basic understanding of statistical concepts (know-why) as well as practical tools to analyse quantitative data in SPSS (know-how). We wanted to keep the guide completely free of formulas (i.e. brain-freezing mathematical equations). In doing so, we have tried to explain everything at the most elementary level and only include aspects that are important in actual research. As such, this guide is pragmatic and research-oriented. Hopefully, you will find it useful.
This guide consists of two parts. The first part (Chapters 1-5) concerns various aspects concerning data management and descriptive statistics. Next, we discuss issues related to statistical significance (Chapter 6). The following part deals with some basic types of statistical analysis, such as t-tests, ANOVA, chi-square, correlation analysis, and factor analysis (Chapters 7-10). Then we discuss theoretical and practical dimensions of regression analysis (Chapters 11-12) before continuing into how to actually conduct regression analysis, including interaction analysis (Chapters 13-17).
Changes in Version 2:
Page numbers have been corrected.
History
Original title
A practical guide to quantitative methods with SPSSOriginal language
- English
ISSN
2003-0142Usage metrics
Categories
Keywords
Research Reports in Public Health SciencesInstitutionen för folkhälsovetenskapDepartment of Public Health SciencesQuantitativeMethodsStatisticsSPSSStatisticsApplied StatisticsPublic Health and Health Services not elsewhere classifiedEconometric and Statistical MethodsSociological Methodology and Research MethodsEpidemiology
Licence
Exports
RefWorks
BibTeX
Ref. manager
Endnote
DataCite
NLM
DC