数据引用的理论与实践

Theory and practice of data citation

Journal of the Association for Information Science and Technology (JASIST) · 2017
被引 123 · 同刊同年前 4%
ABS 3

中文导读

本文综述了数据引用的理论与实践,涵盖为何需要数据引用、引用原则及计算方法,旨在将数据提升为与论文同等重要的研究产出,帮助学者理解数据的使用和影响力。

Abstract

Citations are the cornerstone of knowledge propagation and the primary means of assessing the quality of research, as well as directing investments in science. Science is increasingly becoming “data‐intensive,” where large volumes of data are collected and analyzed to discover complex patterns through simulations and experiments, and most scientific reference works have been replaced by online curated data sets. Yet, given a data set, there is no quantitative, consistent, and established way of knowing how it has been used over time, who contributed to its curation, what results have been yielded, or what value it has. The development of a theory and practice of data citation is fundamental for considering data as first‐class research objects with the same relevance and centrality of traditional scientific products. Many works in recent years have discussed data citation from different viewpoints: illustrating why data citation is needed, defining the principles and outlining recommendations for data citation systems, and providing computational methods for addressing specific issues of data citation. The current panorama is many‐faceted and an overall view that brings together diverse aspects of this topic is still missing. Therefore, this paper aims to describe the lay of the land for data citation, both from the theoretical (the why and what) and the practical (the how) angle.

数据科学信息检索科学计量学学术评价