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Dynamics of Nonlinear Random Walks on Complex Networks

机译:复杂网络上非线性随机散步的动态

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In this paper, we study the dynamics of nonlinear random walks. While typical random walks on networks consist of standard Markov chains whose static transition probabilities dictate the flow of random walkers through the network, nonlinear random walks consist of nonlinear Markov chains whose transition probabilities change in time depending on the current state of the system. This framework allows us to model more complex flows through networks that may depend on the current system state. For instance, under humanitarian or capitalistic direction, resource flow between institutions may be diverted preferentially to poorer or wealthier institutions, respectively. Importantly, the nonlinearity in this framework gives rise to richer dynamical behavior than occurs in linear random walks. Here we study these dynamics that arise in weakly and strongly nonlinear regimes in a family of nonlinear random walks where random walkers are biased either toward (positive bias) or away from (negative bias) nodes that currently have more random walkers. In the weakly nonlinear regime, we prove the existence and uniqueness of a stable stationary state fixed point provided that the network structure is primitive that is analogous to the stationary distribution of a typical (linear) random walk. We also present an asymptotic analysis that allows us to approximate the stationary state fixed point in the weakly nonlinear regime. We then turn our attention to the strongly nonlinear regime. For negative bias, we characterize a period-doubling bifurcation where the stationary state fixed point loses stability and gives rise to a periodic orbit below a critical value. For positive bias, we investigate the emergence of multistability of several stable stationary state fixed points.
机译:在本文中,我们研究了非线性随机散步的动态。虽然网络上的典型随机散步由标准马尔可夫链组成,其静态过渡概率通过网络决定随机步行者的流动,非线性随机步行由非线性马尔可夫链组成,其过渡概率根据系统的当前状态而变化的过渡概率。此框架允许我们通过可能取决于当前系统状态的网络模拟更复杂的流程。例如,在人道主义或资本主义方向下,机构之间的资源流动可以分别优先转向较贫穷或富裕的机构。重要的是,该框架中的非线性引起了更丰富的动态行为,而不是线性随机行走。在这里,我们研究了在一个非线性随机行走家庭中产生的弱且强烈的非线性制度中出现的动态,其中随机步行者偏向(正偏见)或远离当前具有更多随机步行者的节点(负偏差)。在弱非线性方案中,我们证明了稳定的静止状态传出点的存在和唯一性,条件是网络结构是基态,其类似于典型(线性)随机步行的固定分布。我们还提出了一种渐近分析,使我们允许我们在弱非线性方案中近似静止状态的固定点。然后我们将注意力转向强烈的非线性政权。对于负偏差,我们表征了静止状态固定点失去稳定性的周期加倍的分叉,并产生低于临界值的周期性轨道。对于积极的偏见,我们研究了几个稳定的静止状态固定点的多幂的出现。

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