Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data

As scientific data volumes, format types, and sources increase rapidly with the invention and improvement of scientific capabilities, the resulting datasets are becoming more complex to manage as well. One of the significant management challenges is pulling apart the individual contributions of spec...

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Main Authors: Chung-Yi Hou, Matthew Mayernik
Format: Article
Language:English
Published: University of Edinburgh 2016-10-01
Series:International Journal of Digital Curation
Online Access:http://www.ijdc.net/article/view/357
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spelling doaj-f8f423aeb5c64de69f02b9b157ca6e072020-11-25T03:01:13ZengUniversity of EdinburghInternational Journal of Digital Curation1746-82562016-10-0111110.2218/ijdc.v11i1.357Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific DataChung-Yi Hou0Matthew Mayernik1Graduate School of Library and Information Science University of Illinois at Urbana-ChampaignNCAR Library National Center for Atmospheric Research (NCAR)As scientific data volumes, format types, and sources increase rapidly with the invention and improvement of scientific capabilities, the resulting datasets are becoming more complex to manage as well. One of the significant management challenges is pulling apart the individual contributions of specific people and organizations within large, complex projects. This is important for two aspects: 1) assigning responsibility and accountability for scientific work, and 2) giving professional credit to individuals (e.g. hiring, promotion, and tenure) who work within such large projects. This paper aims to review the extant practice of data attribution and how it may be improved. Through a case study of creating a detailed attribution record for a climate model dataset, the paper evaluates the strengths and weaknesses of the current data attribution method and proposes an alternative attribution framework accordingly. The paper concludes by demonstrating that, analogous to acknowledging the different roles and responsibilities shown in movie credits, the methodology developed in the study could be used in general to identify and map out the relationships among the organizations and individuals who had contributed to a dataset.  As a result, the framework could be applied to create data attribution for other dataset types beyond climate model datasets.     http://www.ijdc.net/article/view/357
collection DOAJ
language English
format Article
sources DOAJ
author Chung-Yi Hou
Matthew Mayernik
spellingShingle Chung-Yi Hou
Matthew Mayernik
Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
International Journal of Digital Curation
author_facet Chung-Yi Hou
Matthew Mayernik
author_sort Chung-Yi Hou
title Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
title_short Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
title_full Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
title_fullStr Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
title_full_unstemmed Recognizing the Diversity of Contributions: A Case Study for Framing Attribution and Acknowledgement for Scientific Data
title_sort recognizing the diversity of contributions: a case study for framing attribution and acknowledgement for scientific data
publisher University of Edinburgh
series International Journal of Digital Curation
issn 1746-8256
publishDate 2016-10-01
description As scientific data volumes, format types, and sources increase rapidly with the invention and improvement of scientific capabilities, the resulting datasets are becoming more complex to manage as well. One of the significant management challenges is pulling apart the individual contributions of specific people and organizations within large, complex projects. This is important for two aspects: 1) assigning responsibility and accountability for scientific work, and 2) giving professional credit to individuals (e.g. hiring, promotion, and tenure) who work within such large projects. This paper aims to review the extant practice of data attribution and how it may be improved. Through a case study of creating a detailed attribution record for a climate model dataset, the paper evaluates the strengths and weaknesses of the current data attribution method and proposes an alternative attribution framework accordingly. The paper concludes by demonstrating that, analogous to acknowledging the different roles and responsibilities shown in movie credits, the methodology developed in the study could be used in general to identify and map out the relationships among the organizations and individuals who had contributed to a dataset.  As a result, the framework could be applied to create data attribution for other dataset types beyond climate model datasets.    
url http://www.ijdc.net/article/view/357
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