Unit 66136, Beijing, 100042, China.
Science and Technology on Information Systems Engineering Laboratory, National University of Defense Technology, Changsha, 410073, China.
Sci Rep. 2020 Feb 10;10(1):2231. doi: 10.1038/s41598-020-59020-4.
The identification of the most influential individuals in structured populations is an important research question, with many applications across the social and natural sciences. Here, we study this problem in evolutionary populations on static networks, where invading cheaters can lead to the collapse of cooperation. We propose six strategies to rank the invading cheaters and identify those which mostly facilitate the collapse of cooperation. We demonstrate that the type of successful rankings depend on the selection strength, the underlying game, and the network structure. We show that random ranking has generally little ability to successfully identify invading cheaters, especially for the stag-hunt game in scale-free networks and when the selection strength is strong. The ranking based on degree can successfully identify the most influential invaders when the selection strength is weak, while more structured rankings perform better at strong selection. Scale-free networks and strong selection are generally detrimental to the performance of the random ranking, but they are beneficial for the performance of structured rankings. Our research reveals how to identify the most influential invaders using statistical measures in structured communities, and it demonstrates how their success depends on population structure, selection strength, and on the underlying game dynamics.
在结构种群中识别最具影响力的个体是一个重要的研究问题,在社会和自然科学的许多领域都有应用。在这里,我们研究了静态网络上进化种群中的这个问题,其中入侵的骗子会导致合作的崩溃。我们提出了六种策略来对入侵骗子进行排名,并确定那些最有利于合作崩溃的骗子。我们证明了成功排名的类型取决于选择强度、基础博弈和网络结构。我们表明,随机排名通常几乎没有能力成功识别入侵的骗子,特别是在无标度网络上的猎鹿博弈和选择强度较强的情况下。基于度的排名在选择强度较弱时可以成功识别最有影响力的入侵者,而更有组织的排名在选择强度较强时表现更好。无标度网络和强选择通常不利于随机排名的性能,但有利于有组织排名的性能。我们的研究揭示了如何使用结构社区中的统计措施来识别最有影响力的入侵者,并且表明了它们的成功取决于种群结构、选择强度和基础博弈动态。