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R을 활용한 정보교육관련 논문 분석

Analysis of Information Education Related Theses Using R Program

  • 박선주 (광주교육대학교 컴퓨터교육과)
  • Park, SunJu (Dept. of Computer Science Education, Gwangju National University of Education)
  • 투고 : 20161200
  • 발행 : 2017.02.28

초록

최근 빅데이터 분석과 함께 사회연결망에 대한 관심이 증대되고 있다. 이러한 사회연결망분석을 이용한 연구가 사회과학 영역뿐 아니라 자연과학 영역 등 여러 분야에서 다양하게 이루어지고 있다. 이에 본 논문에서는 정보교육 관련 석 박사 학위논문을 수집하여 텍스트분석과 사회연결망분석을 실시하였다. 그 결과, 모든 기간에서 출현빈도수가 높게 나오거나 지속적으로 나오는 단어가 있었으며, 기간별로 출현빈도가 갑자기 높아진 단어들도 있었다. 또한, 출현빈도수가 큰 단어가 대체적으로 매개중심성도 컸으며, 기간별 연구흐름의 특징이 있음도 알 수 있었다. 그러므로 IT 기술발전과 초 중 고등학교 정보교육과정 변화에 민감하게 정보교육 석 박사학위 논문 주제가 변화되었음을 알 수 있었다. 앞으로 기간4에서 출현빈도가 높아진 스마트, 모바일, 스마트폰, SNS, 어플리케이션, 스토리텔링, 다문화, STEAM과 관련된 연구가 지속될 것으로 예측하며, 로봇, 프로그래밍, 코딩, 알고리즘, 창의성, 상호작용, 개인정보보호와 관련된 주제도 꾸준히 연구될 것으로 예측된다.

Lately, academic interests in big data analysis and social network has been prominently raised. Various academic fields are involved in this social network based research trend, which is, social network has been actively used as the research topic in social science field as well as in natural science field. Accordingly, this paper focuses on the text analysis and the following social network analysis with the Master's and Doctor's dissertations. The result indicates that certain words had a high frequency throughout the entire period and some words had fluctuating frequencies in different period. In detail, the words with a high frequency had a higher betweenness centrality and each period seems to have a distinctive research flow. Therefore, it was found that the subjects of the Master's and Doctor's dissertations were changed sensitively to the development of IT technology and changes in information curriculum of elementary, middle and high school. It is predicted that researches related to smart, mobile, smartphone, SNS, application, storytelling, multicultural, and STEAM, which had an increased frequency in period 4, would be continuously conducted. Moreover, the topics of robots, programming, coding, algorithms, creativity, interaction, and privacy will also be studied steadily.

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