杨中楷

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教授

博士生导师

硕士生导师

主要任职:公共管理学院党委书记

性别:男

毕业院校:大连理工大学

学位:博士

所在单位:公共管理学院

学科:科学学与科技管理

办公地点:大连理工大学南门科技园

联系方式:email@dlut.edu.cn

电子邮箱:Email@dlut.edu.cn

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Measuring global research activities using geographic data of scholarly article visits

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论文类型:期刊论文

发表时间:2017-01-01

发表刊物:ELECTRONIC LIBRARY

卷号:35

期号:4,SI

页面范围:822-838

ISSN号:0264-0473

关键字:Article usage; Big geographical data; Knowledge diffusion; Research activity

摘要:Purpose - This study aims to analyse the geographical distribution of global research activities and to investigate the knowledge diffusion embodied in scientific papers.
   Design/methodology/approach -The geographical summary of Frontiers articles displays the number of visits and categorizes where the visitors hail from. This study uses the records of 23,798 articles published in 16 Frontiers journals from 2007 to 2015 to analyse the geographical distribution of article visits at both country and city levels. The process of knowledge diffusion is investigated on the basis of the different visiting patterns of new and old papers.
   Findings - Most article visits are concentrated around major metropolitan areas and some high-tech clusters. The top "visiting countries" include both developed countries and developing countries, and the USA and China are two major players. Publishing cities dominate article visits for new papers; as time passes, there is diffusion from the publishing cities to a broader area.
   Research limitations/implications - The data on visiting for open access articles may be generated from various repositories besides the publishers' websites; these data are ignored, as they are not significant enough to have much influence. There is also a lack of a basic theory in the data processing of outliers in the data set. In addition, only static results are given in this paper, as the data were collected on one day, for one time. A longer time period is necessary to track the dynamic diffusion process of the observations.
   Practical implications - Introduction of usage data will propose a novel way to analyse research activities and track knowledge diffusion. Social implications - The visiting data of articles offer a new way to investigate research activities at the city level in a detailed and timely manner, for the geographical distribution of research activities and the research resource allocation of a specific country to be explored.
   Originality/value - This study measured the research activities of scientific papers by examining the usage data. Compared with previous studies that focused on the geographical distribution of scientific activities using publication data, citation data and even altmetrics data, usage data are at the forefront of this research. Therefore, usage data offer a fresh perspective on methodology, providing more detailed and real-time information.