Modeling and Analysis of Scholar Mobility on Scientific Landscape

作者: Qiu Fang Ying , Srinivasan Venkatramanan , Dah Ming Chiu

DOI: 10.1145/2740908.2741737

关键词:

摘要: Scientific literature till date can be thought of as a partially revealed landscape, where scholars continue to unveil hidden knowledge by exploring novel research topics. How do explore the scientific i.e., choose topics work on? We propose an agent-based model topic mobility behavior migrate across on space science following different strategies, seeking utilities. use this study whether strategies widely used in current community provide balance between individual success and efficiency diversity whole academic society. Through extensive simulations, we insights into roles such choosing according potential or popularity. Our provides conceptual framework computational approach analyze scholars' its impact production. also discuss how modeling integrated with big real-world scholarly data.

参考文章(13)
Andrea Scharnhorst, Constructing Knowledge Landscapes Within the Framework of Geometrically Oriented Evolutionary Theories Integrative Systems Approaches to Natural and Social Dynamics. pp. 505- 515 ,(2001) , 10.1007/978-3-642-56585-4_32
Kevin W. Boyack, Richard Klavans, Creation of a highly detailed, dynamic, global model and map of science association for information science and technology. ,vol. 65, pp. 670- 685 ,(2014) , 10.1002/ASI.22990
Michael Weisberg, Ryan Muldoon, Epistemic Landscapes and the Division of Cognitive Labor Philosophy of Science. ,vol. 76, pp. 225- 252 ,(2009) , 10.1086/644786
D. J. de Solla Price, NETWORKS OF SCIENTIFIC PAPERS. Science. ,vol. 149, pp. 510- 515 ,(1965) , 10.1126/SCIENCE.149.3683.510
Geoffrey E Hinton, Ruslan R Salakhutdinov, Reducing the Dimensionality of Data with Neural Networks Science. ,vol. 313, pp. 504- 507 ,(2006) , 10.1126/SCIENCE.1127647
Marko Grobelnik, Blaz Fortuna, Dunja Mladenic, Visualization of Text Document Corpus Informatica (lithuanian Academy of Sciences). ,vol. 29, pp. 497- 504 ,(2005)
Dashun Wang, Chaoming Song, Albert-László Barabási, Quantifying long-term scientific impact. Science. ,vol. 342, pp. 127- 132 ,(2013) , 10.1126/SCIENCE.1237825
M. E. J. Newman, The structure of scientific collaboration networks Proceedings of the National Academy of Sciences of the United States of America. ,vol. 98, pp. 404- 409 ,(2001) , 10.1073/PNAS.98.2.404
Marc' Aurelio Ranzato, Martin Szummer, Semi-supervised learning of compact document representations with deep networks Proceedings of the 25th international conference on Machine learning - ICML '08. pp. 792- 799 ,(2008) , 10.1145/1390156.1390256