Hopp til hovedinnholdet
Qualitative Content Analysis in Practice

Qualitative Content Analysis in Practice


Qualitative content analysis is a powerful method for analyzing large amounts of qualitative data collected through interviews or focus groups. It is frequently employed by students, but introductory textbooks on content analysis have largely focused on the quantitative version of the method.

In one of the first to focus on qualitative content analysis, Margrit Schreier takes students step-by step through:

- creating a coding frame

- segmenting the material

- trying out the coding frame

- evaluating the trial coding

- carrying out the main coding

- what comes after qualitative content analysis

- making use of software when conducting qualitative content analysis.

Each part of the process is described in detail and research examples are provided to illustrate each step. Frequently asked questions are answered, the most important points are summarized, and end of chapter questions provide an opportunity to revise these points. After reading the book, students are fully equiped to conduct their own qualitative content analysis.

Designed for upper level undergraduate, MA, PhD students and researchers across the social sciences, this is essential reading for all those who want to use qualitative content analysis.

PocketEngelsk
869,-

Ved å fullføre kjøpet aksepterer jeg kjøpsvilkårene.

Ikke tilgjengelig for Klikk&Hent

På nettlager. Bestilles fra England. Leveres normalt innen 5-8 virkedager.

Produktinformasjon
Format
Pocket
Utgivelsesår
2012
Første salgsdato
21.02.2012
Forlag
SAGE Publications Ltd
Språk
Engelsk
Antall sider
280
Høyde
229 mm
Bredde
165 mm
Lengde
18 mm
Vekt
498 g
ISBN
9781849205931
Kundevurderinger

0

0 vurderinger

0%
0%
0%
0%
0%

Din vurdering

Logg inn for å se eller gi din vurdering.

Kundevurderingene er skrevet av verifiserte kjøpere. Det betyr at produktet som vurderes må være kjøpt hos ARK og registrert på brukers profil. For å registrere kjøp gjort i butikk, må man være ARK-venn.

Mer om kundevurderinger i ARK