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An Approach Toward Image Access Points based on Image Needs in Context of Everyday Life

Journal of the Korean Society for Information Management / Journal of the Korean Society for Information Management, (P)1013-0799; (E)2586-2073
2012, v.29 no.4, pp.273-294
https://doi.org/10.3743/KOSIM.2012.29.4.273


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Abstract

Images have been substantially searched and used due to not only the advanced internet and digital technologies but the characteristics of a younger generation. The purpose of this study aims to discuss the ways on expanding the access points to images by analyzing the needs of users in context of everyday life. In order to achieve the purpose of this study, 105 questions of image seeking in NAVER, which is one of social Q&A services in Korea, were analyzed. For the analysis, a two-dimensional framework with image uses and image attributes were utilized. The findings of this study demonstrate that considerable use purposes on data oriented pole, such as information processing, information dissemination and learning are identified. On the other hand, image attributes from the needs of image show that non-visual aspects including contextual attributes are recognized substantially in addition to the traditional semantic attributes.

keywords
image, information needs, everyday life, information behavior, searching model, indexing, access point, social Q&A, image, information needs, everyday life, information behavior, searching model, indexing, access point, social Q&A, 이미지, 정보요구, 일상생활, 정보행동, 탐색모델, 색인, 접근점, 소셜 Q&A

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Journal of the Korean Society for Information Management