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NTIS 바로가기한국문헌정보학회지 = Journal of the Korean Society for Library and Information Science, v.53 no.4, 2019년, pp.171 - 187
주영준 (성균관대학교 문헌정보학과) , 김동훈 (성균관대학교 문헌정보학과) , 이창호 (성균관대학교 문헌정보학과) , 이용정 (성균관대학교 문헌정보학과)
The study aims to analyze the posts of depression-related Facebook groups to understand major topics discussed by group users. Specifically, the purpose of the study is to identify the topics and keywords of the posts to understand what users discuss about depression. Depression is a mental disorder...
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핵심어 | 질문 | 논문에서 추출한 답변 |
---|---|---|
우울증 증세가 있는 사람들은 자신의 심리적 상황을 다른 사람들에게 표현하여 감정적 내지는 사회적 지원(social support)을 받고자 하는 경향을 가지고 있어 이를 위해 주로 활용하는 것은 무엇인가? | 2018). 우울증 증세가 있는 사람들은 자신의 심리적 상황을 다른 사람들에게 표현하여 감정적 내지는 사회적 지원(social support)을 받고자 하는 경향이 있으며 이를 위해 소셜 미디어를 활용하는 것으로 나타났다(Bazarova et al. 2017). | |
사용목적이나 주요 컨텐츠 측면에서 보았을 때 페이스북과 트위터는 어떤 형식으로 정보 공유가 이루어지는가? | 소셜 Q&A 사이트의 경우 이용자들은 자신들의 건강문제에 대한 구체적인 질문들을 하고 여러 사람들로부터 이 질문들에 대한 답변을 구하는 정보추구활동을 벌인다(Yi 2018). 한편, 페이스북이나 트위터는 어떤 질문에 대한 답을 제공하는 방식보다는 주로 이용자들이 서로 간의 관계형성을 통해 자신의 질병이나 건강문제에 대한 의견이나 상태를 일상담화의 형태로 표현하거나 글을 주고 받는 형식으로 정보공유가 이루어진다. 특히, 페이스북은 온라인 네트워크를 통해 많은 사람들과 “친구”라는 사회적 관계를 형성하고 자신의 생각과 경험을 공유할 뿐 아니라 시시각각 변하는 자신들의 감정과 상태를 업데이트하기 때문에 페이스북 이용자가 어떤 상태에 있는지를 파악하기 좋고, 이러한 환경은 우울증을 진단하거나 그 증세를 예측하는 데 효과적이다(Guntuku et al. | |
페이스북 그룹은 무엇인가? | 페이스북 그룹은 공동 관심사를 가진 사용자 들이 모여서 정보를 공유하고 의견을 나누는 온라인 커뮤니티이다. 소셜 네트워크 서비스의 특성상 사용자들은 익명성이 보장되는 환경에서 자유롭게 소통할 수 있다. |
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