Quantifying collectivity

Current Opinion in Neurobiology - Tập 37 - Trang 106-113 - 2016
Bryan C Daniels1, Christopher J Ellison2, David C Krakauer3,1,2, Jessica C Flack3,1,2
1ASU–SFI Center for Biosocial Complex Systems, Arizona State University, United States
2Center for Complexity and Collective Computation, Wisconsin Institute for Discovery, University of Wisconsin–Madison, United States
3Santa Fe Institute, Santa Fe, NM 87501, United States

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