Towards Automatic Generation of Portions of Scientific Papers for Large Multi-Institutional Collaborations Based on Semantic Metadata.

CEUR workshop proceedings Pub Date : 2017-10-01
MiHyun Jang, Tejal Patted, Yolanda Gil, Daniel Garijo, Varun Ratnakar, Jie Ji, Prince Wang, Aggie McMahon, Paul M Thompson, Neda Jahanshad
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引用次数: 0

Abstract

Scientific collaborations involving multiple institutions are increasingly commonplace. It is not unusual for publications to have dozens or hundreds of authors, in some cases even a few thousands. Gathering the information for such papers may be very time consuming, since the author list must include authors who made different kinds of contributions and whose affiliations are hard to track. Similarly, when datasets are contributed by multiple institutions, the collection and processing details may also be hard to assemble due to the many individuals involved. We present our work to date on automatically generating author lists and other portions of scientific papers for multi-institutional collaborations based on the metadata created to represent the people, data, and activities involved. Our initial focus is ENIGMA, a large international collaboration for neuroimaging genetics.

Abstract Image

基于语义元数据的大型多机构协作科学论文部分自动生成研究。
涉及多个机构的科学合作越来越普遍。出版物有几十个或几百个作者,在某些情况下甚至有几千个作者,这并不罕见。收集这类论文的信息可能非常耗时,因为作者名单必须包括做出不同贡献的作者,而他们的隶属关系很难追踪。同样,当数据集由多个机构提供时,由于涉及许多个人,收集和处理细节也可能难以汇总。我们介绍了我们迄今为止在自动生成作者列表和多机构合作科学论文的其他部分方面的工作,这些工作基于创建的元数据来表示所涉及的人员、数据和活动。我们最初的重点是ENIGMA,一个大型的神经成像遗传学国际合作项目。
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