Are randomly grown graphs really random?
نویسندگان
چکیده
We analyze a minimal model of a growing network. At each time step, a new vertex is added; then, with probability delta, two vertices are chosen uniformly at random and joined by an undirected edge. This process is repeated for t time steps. In the limit of large t, the resulting graph displays surprisingly rich characteristics. In particular, a giant component emerges in an infinite-order phase transition at delta=1/8. At the transition, the average component size jumps discontinuously but remains finite. In contrast, a static random graph with the same degree distribution exhibits a second-order phase transition at delta=1/4, and the average component size diverges there. These dramatic differences between grown and static random graphs stem from a positive correlation between the degrees of connected vertices in the grown graph-older vertices tend to have higher degree, and to link with other high-degree vertices, merely by virtue of their age. We conclude that grown graphs, however randomly they are constructed, are fundamentally different from their static random graph counterparts.
منابع مشابه
A Markov Chain Approach to Randomly Grown Graphs
A Markov chain approach to the study of randomly grown graphs is proposed and applied to some popular models that have found use in biology and elsewhere. For most randomly grown graphs used in biology, it is not known whether the graph or properties of the graph converge in some sense as the number of vertices becomes large. Particularly, we study the behaviour of the degree sequence, that is,...
متن کاملCitations, Sequence Alignments, Contagion, and Semantics: On Acyclic Structures and their Randomness
Datasets from several domains, such as life-sciences, semantic web, machine learning, natural language processing, etc. are naturally structured as acyclic graphs. These datasets, particularly those in bio-informatics and computational epidemiology, have grown tremendously over the last decade or so. Increasingly, as a consequence, there is a need to build and evaluate various strategies for pr...
متن کاملCoalescent Random Walks on Graphs
Inspired by coalescent theory in biology, we introduce a stochastic model called ”multi-person simple random walks” or “coalescent random walks” on a graph G. There are any finite number of persons distributed randomly at the vertices of G. In each step of this discrete time Markov chain, we randomly pick up a person and move it to a random adjacent vertex. To study this model, we introduce the...
متن کاملContinuity of the percolation threshold in randomly grown graphs ∗
We consider various models of randomly grown graphs. In these models the vertices and the edges accumulate within time according to certain rules. We study a phase transition in these models along a parameter which refers to the mean life-time of an edge. Although deleting old edges in the uniformly grown graph changes abruptly the properties of the model, we show that some of the macro-charact...
متن کاملRandom Characterization of Design Automation Algorithms
Randomly generated Directed Acyclic Graphs (DAGs) can be used to generate various kinds of EDA test data. For example, they can be used to characterize channel routing algorithms. This paper uses such data to characterize the relative performance of a number of different channel routing algorithms, with the aim of determining those factors that have the most effect on routing performance. Our s...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- Physical review. E, Statistical, nonlinear, and soft matter physics
دوره 64 4 Pt 1 شماره
صفحات -
تاریخ انتشار 2001