期刊
SIAM REVIEW
卷 56, 期 4, 页码 577-621出版社
SIAM PUBLICATIONS
DOI: 10.1137/120901866
关键词
agent-based models; self-alignment; heterophilious dynamics; clusters; consensus; flocking; active sets; connectivity of graphs; mean-field limits; kinetic equations; hydrodynamics
资金
- NSF [DMS10-08397, RNMS11-07444]
- ONR [N00014-1210318]
- Center for Scientific Computation and Mathematical Modeling (CSCAMM)
We review a general class of models for self-organized dynamics based on alignment. The dynamics of such systems is governed solely by interactions among individuals or agents, with the tendency to adjust to their environmental averages. This, in turn, leads to the formation of clusters, e. g., colonies of ants, flocks of birds, parties of people, rendezvous in mobile networks, etc. A natural question which arises in this context is to ask when and how clusters emerge through the self-alignment of agents, and what types of rules of engagement influence the formation of such clusters. Of particular interest to us are cases in which the self-organized behavior tends to concentrate into one cluster, reflecting a consensus of opinions, flocking of birds, fish, or cells, rendezvous of mobile agents, and, in general, concentration of other traits intrinsic to the dynamics. Many standard models for self-organized dynamics in social, biological, and physical sciences assume that the intensity of alignment increases as agents get closer, reflecting a common tendency to align with those who think or act alike. Moreover, similarity breeds connection reflects our intuition that increasing the intensity of alignment as the difference of positions decreases is more likely to lead to a consensus. We argue here that the converse is true: when the dynamics is driven by local interactions, it is more likely to approach a consensus when the interactions among agents increase as a function of their difference in position. Heterophily, the tendency to bond more with those who are different rather than with those who are similar, plays a decisive role in the process of clustering. We point out that the number of clusters in heterophilious dynamics decreases as the heterophily dependence among agents increases. In particular, sufficiently strong heterophilious interactions enhance consensus.
作者
我是这篇论文的作者
点击您的名字以认领此论文并将其添加到您的个人资料中。
推荐
暂无数据