Structure and evolution of Indian physics co-authorship networks

被引:0
作者
Chakresh Kumar Singh
Shivakumar Jolad
机构
[1] Indian Institute of Technology Gandhinagar,
来源
Scientometrics | 2019年 / 118卷
关键词
Collaboration network; Community detection; Community evolution; Physics community; India; 91D30; 62-07; 86A17;
D O I
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中图分类号
学科分类号
摘要
We trace the evolution of Indian physics community from 1919 to 2013 by analyzing the co-authorship network constructed from papers published by authors in India in American Physical Society (APS) journals. We make inferences on India’s contribution to different branches of Physics and identify the most influential Indian physicists at different time periods. The relative contribution of India to global physics publication (research) and its variation across subfields of physics is assessed. We extract the changing collaboration pattern of authors between Indian physicists through various network measures. We study the evolution of Indian physics communities and trace the mean life and stationarity of communities by size in different APS journals. We map the transition of authors between communities of different sizes from 1970 to 2013, capturing their birth, growth, merger and collapse. We find that Indian–Foreign collaborations are increasing at a faster pace compared to the Indian–Indian. We observe that the degree distribution of Indian collaboration networks follows the power law, with distinct patterns between Physical Review A, B and E, and high energy physics journals Physical Review C and D, and Physical Review Letters. In almost every measure, we observe strong structural differences between low-energy and high-energy physics journals.
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页码:385 / 406
页数:21
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