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  • 한국과학기술정보연구원(KISTI) 서울분원 대회의실(별관 3층)
  • 2024년 07월 03일(수) 13:30
 

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  • P-ISSN1225-598X
  • E-ISSN2982-6292

데이터 관리와 공유에 대한 대학 연구자들의 인식에 관한 연구

A Study on the Perceptions of University Researchers on Data Management and Sharing

한국문헌정보학회지 / Journal of the Korean Society for Library and Information Science, (P)1225-598X; (E)2982-6292
2015, v.49 no.3, pp.413-436
https://doi.org/10.4275/KSLIS.2015.49.3.413
김지현 (이화여자대학교)

초록

본 연구는 국내 대학에 소속된 연구자들을 대상으로 데이터 관리 현황과 데이터 공유 및 재이용에 대한 경험과 인식을 조사하는 것을 목적으로 하였다. 이를 위해 본 연구에 선행하여 수행된 설문조사의 응답자 중 후속 인터뷰에 동의한 13명을 대상으로 반구조화된 인터뷰를 수행하였다. 참여자들은 다양한 유형과 포맷의 데이터를 생성 또는 수집하고 있었으며 데이터 기록화를 수행하는 연구자들은 소수에 불과하였으나 이들은 그 중요성을 인식하고 있었다. 데이터가 유용한 기간을 데이터가 논문 출판에 활용될 수 있는 기간으로 인식하는 연구자들이 대다수이었으나, 데이터가 유용하다고 인식하는 기간 이상으로 데이터를 보존하려는 연구자들이 많아 데이터의 저장과 보존에 대한 연구자들의 요구가 적지 않은 것으로 나타났다. 데이터의 공유와 재이용은 개인적인 연구 모임이나 연구 팀 등 잘 알고 있는 사람들과의 범위 내에서 이루어지고 있었다. 정부연구비 지원을 받는 과제의 데이터는 오픈 액세스로 공개해야 한다는 논리에 전적으로 찬성하는 연구자들도 있는 반면 부분적으로 동의하거나 반대하는 의견도 있었다. 다수의 참여자들이 연구아이디어의 도용, 표절, 논문 출판의 주도권 문제 등 연구데이터 공유에 대한 우려를 나타내고 있었으며 이를 완화할 수 있는 유인책이 마련될 필요가 있다.

keywords
Data Management, Data Sharing, Data Reuse, University Researchers, 데이터관리, 데이터공유, 데이터재이용, 대학 연구자

Abstract

This study aimed to investigate data management practices of university researchers in Korea, as well as their experiences and perceptions of data sharing and reuse. For this purpose, it performed semi-structured interviews of 13 researchers who agreed to participate in interviews followed by a survey conducted prior to this study. The interview participants created or collected research data with various types and formats, and only a few conducted data documentation while they recognized its significance. The majority of participants perceived the period that data would be useful as the period that data can be employed for publications. However, most participants wanted to preserve data beyond the period that data would be considered useful and it indicates they have no small need for data storage and preservation. Participants usually shared data with those whom they have known, such as a personal research group or a research team. While some completely agree with the principle that publicly-funded data should be open to the public, others partially agreed or disagreed with it. Most participants were concerned about being scooped, plagiarism, and maintaining the first right to publish and incentives to mitigate the concerns would be necessary.

keywords
Data Management, Data Sharing, Data Reuse, University Researchers, 데이터관리, 데이터공유, 데이터재이용, 대학 연구자

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