메뉴 건너뛰기
Library Notice
Institutional Access
If you certify, you can access the articles for free.
Check out your institutions.
ex)Hankuk University, Nuri Motors
Log in Register Help KOR
Subject

A Study on Identities of Korean Consumers' Co-ops Through Discourse Analysis of Their Websites
Recommendations
Search

한국생협의 정체성에 대한 연구: 홈페이지 담론 분석을 통해

논문 기본 정보

Type
Academic journal
Author
Chanhee Yeom (성공회대학교)
Journal
농협대학교 협동조합경영연구소 협동조합경영연구 협동조합경제경영연구 제56권 KCI Candidated Journals
Published
2022.6
Pages
67 - 93 (27page)

Usage

cover
A Study on Identities of Korean Consumers' Co-ops Through Discourse Analysis of Their Websites
Ask AI
Recommendations
Search

Abstract· Keywords

Report Errors
This article seeks to figure out identities of consumers’ co-ops by analyzing their websites. In other words, this study aimed to explain how Korean consumers’ co-ops represent their identities on their website homepages. The homepage of an organization is a suitable text for uncovering it’s identity is proved by some preceding researches. Dure Coop, iCOOP, Hansalim, Happycoop are objects of this study. The iCOOP and Hansalim have been selected for analysis. Multimodal texts on the homepage and the ‘About Us’ page from October to December 2021 are examined, by using critical discourse analysis and Kress & van Leeuwen’s concepts of visual grammar. Results of this research show differences in the form and content of representation of the identity of consumers’ co-ops, the words used to describe members and goods, the manners of naming the related body, and more. Compared to the others, Hansalim has a unique, farmer-oriented paradigm. The iCOOP is different from other co-ops, because it places a premium on “I” and “the individual.” Despite a varieties of identities, consumers’ co-ops have similar social values; to build a harmonious society rather than a “winner take-all” society and to devote themselves to save the earth against climate change.

Contents

No content found

References (0)

Add References

Recommendations

It is an article recommended by DBpia according to the article similarity. Check out the related articles!

Related Authors

Recently viewed articles

Comments(0)

0

Write first comments.