Percolation Transitions in Growing Networks Under Achlioptas Processes: Analytic Solutions
Soo Min Oh, Seung-Woo Son, Byungnam Kahng

TL;DR
This paper provides explicit analytical solutions for percolation transitions in growing networks under Achlioptas processes, revealing how suppression strength influences critical behavior and transition order.
Contribution
It derives explicit critical behavior formulas for growing networks under Achlioptas processes, filling a gap in analytical understanding of these transitions.
Findings
Transition point approaches unity as suppression increases
Order-parameter exponent approaches zero algebraically with increasing suppression
Upper critical dimension is 4 for growing networks
Abstract
Networks are ubiquitous in diverse real-world systems. Many empirical networks grow as the number of nodes increases with time. Percolation transitions in growing random networks can be of infinite order. However, when the growth of large clusters is suppressed under some effects, e.g., the Achlioptas process, the transition type changes to the second order. However, analytical results for the critical behavior, such as the transition point, critical exponents, and scaling relations are rare. Here, we derived them explicitly as a function of a control parameter representing the suppression strength using the scaling ansatz. We then confirmed the results by solving the rate equation and performing numerical simulations. Our results clearly show that the transition point approaches unity and the order-parameter exponent approaches zero algebraically as , whereas…
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