Evolution Of A Random Network
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Evolution of a random network is a dynamical process in random networks, usually leading to
emergence In philosophy, systems theory, science, and art, emergence occurs when a complex entity has properties or behaviors that its parts do not have on their own, and emerge only when they interact in a wider whole. Emergence plays a central rol ...
of
giant component In network theory, a giant component is a connected component of a given random graph that contains a significant fraction of the entire graph's vertices. More precisely, in graphs drawn randomly from a probability distribution over arbitrarily ...
s, accompanied with striking consequences on the
network topology Network topology is the arrangement of the elements (Data link, links, Node (networking), nodes, etc.) of a communication network. Network topology can be used to define or describe the arrangement of various types of telecommunication networks, ...
. To quantify this process, there is a need of inspection on how the size of the largest connected cluster within the network, , varies with the average degree .Albert-László Barabási. Network Science: Chapter 3 Networks change their topology as they evolve, undergoing
phase transition In physics, chemistry, and other related fields like biology, a phase transition (or phase change) is the physical process of transition between one state of a medium and another. Commonly the term is used to refer to changes among the basic Sta ...
s. Phase transitions are generally known from physics, where they occur as matter changes state according to its
thermal energy The term "thermal energy" is often used ambiguously in physics and engineering. It can denote several different physical concepts, including: * Internal energy: The energy contained within a body of matter or radiation, excluding the potential en ...
level, or when
ferromagnetic Ferromagnetism is a property of certain materials (such as iron) that results in a significant, observable magnetic permeability, and in many cases, a significant magnetic coercivity, allowing the material to form a permanent magnet. Ferromagne ...
properties emerge in some materials as they are cooling down. Such phase transitions take place in matter because it is a network of particles, and as such, rules of network phase transition directly apply to it. Phase transitions in networks happen as links are added to a network, meaning that having N nodes, in each time increment, a link is placed between a randomly chosen pair of them. The transformation from a set of disconnected nodes to a fully connected network is called the evolution of a network. If we begin with a network having N totally disconnected nodes (number of links is zero), and start adding links between randomly selected pairs of nodes, the evolution of the network begins. For some time we will just create pairs of nodes. After a while some of these pairs will connect, forming little trees. As we continue adding more links to the network, there comes a point when a giant component emerges in the network as some of these isolated trees connect to each other. This is called the critical point. In our natural example, this point corresponds to temperatures where materials change their state. Further adding nodes to the system, the giant component becomes even larger, as more and more nodes get a link to another node which is already part of the giant component. The other special moment in this transition is when the network becomes fully connected, that is, when all nodes belong to the one giant component, which is effectively the network itself at that point.


Conditions for emergence of a giant component

In the
Erdős–Rényi model In the mathematical field of graph theory, the Erdős–Rényi model refers to one of two closely related models for generating random graphs or the evolution of a random network. These models are named after Hungarians, Hungarian mathematicians ...
, the average degree \langle k \rangle of a graph with n vertices and N edges is given by \langle k \rangle =\frac. The condition for the emergence of a giant component is: . Thus, one link is sufficient for its emergence of the giant component. If expressing the condition in terms of , one obtains:
(1)
Where is the number of nodes, is the probability of
cluster may refer to: Science and technology Astronomy * Cluster (spacecraft), constellation of four European Space Agency spacecraft * Cluster II (spacecraft), a European Space Agency mission to study the magnetosphere * Asteroid cluster, a small ...
ing. Therefore, the larger a network, the smaller is sufficient for the giant component.


Regimes of evolution of a random network

Three topological regimes with its unique characteristics can be distinguished in network science: subcritical, supercritical and connected regimes.


Subcritical regime

The subcritical phase is characterised by small isolated clusters, as the number of links is much less than the number of nodes. A giant component can be designated any time to be the largest isolated small component, but the difference in cluster sizes is effectively negligible in this phase. , For the network consists of isolated nodes. Increasing means adding links to the network. Yet, given that , there is only a small number of links in this regime, hence mainly tiny clusters could be observed. At any moment the largest cluster can be designated to be the giant component. Yet in this regime the relative size of the largest cluster, , remains zero. The reason is that for the largest cluster is a tree with size , hence its size increases much slower than the size of the network. Therefore, in the limit. In summary, in the subcritical regime the network consists of numerous tiny components, whose size follows the
exponential distribution In probability theory and statistics, the exponential distribution or negative exponential distribution is the probability distribution of the distance between events in a Poisson point process, i.e., a process in which events occur continuousl ...
. Hence, these components have comparable sizes, lacking a clear winner that we could designate as a giant.


Critical point

As we keep connecting nodes, the pairs joining together will form small trees, and if we keep connecting nodes, a distinguishable giant component emerges at critical point . This means that at the moment that each component has on average 1 link, a giant component emerges. This point corresponds to probability , as the probability of having a link between two nodes is the ratio of the one case when that one link connect the two randomly chosen nodes, divided by all the other possibilities how that one connection can connect one of the nodes to another node, which is , as a node can connect to all other nodes but itself (excluding the possibility of a self loop in this model). This also has the implication, that the larger a network is, the smaller it needs to have a giant component emerging. , . The critical point separates the regime where there is not yet a giant component ( ) from the regime where there is one ( ). At this point, the relative size of the largest component is still zero. Indeed, the size of the largest component is . Consequently, grows much slower than the network's size, so its relative size decreases as in the limit. Note, however, that in absolute terms there is a significant jump in the size of the largest component at . For example, for a random network with nodes, comparable to the globe's social network, for the largest cluster is of the order of . In contrast at we expect , a jump of about five orders of magnitude. Yet, both in the subcritical regime and at the critical point the largest component contains only a vanishing fraction of the total number of nodes in the network. In summary, at the critical point most nodes are located in numerous small components, whose size distribution follows. The power law form indicates that components of rather different sizes coexist. These numerous small components are mainly trees, while the giant component may contain loops. Note that many properties of the network at the critical point resemble the properties of a
physical system A physical system is a collection of physical objects under study. The collection differs from a set: all the objects must coexist and have some physical relationship. In other words, it is a portion of the physical universe chosen for analys ...
undergoing a phase.


Supercritical regime

Once the giant component had emerged upon passing the critical point, as we add more connections, the network will consist of a growing giant component, and less and less smaller isolated clusters and nodes. Most real networks belong to this regime. The size of the giant component is described as follows . , . This regime has the most relevance to real systems, as for the first time we have a giant component that looks like a network. In the vicinity of the critical point the size of the giant component varies as: or (2) where pc is given by (1). In other words, the giant component contains a finite fraction of the nodes. The further we move from the critical point, a larger fraction of nodes will belong to it. Note that (2) is valid only in the vicinity of . For large the dependence between and is nonlinear. In summary in the supercritical regime numerous isolated components coexist with the giant component, their size distribution following exponential distribution. These small components are trees, while the giant component contains Loops and cycles. The supercritical regime lasts until all nodes are absorbed by the giant.


Connected regime

As connections are added to a network, there comes a point when \langle k \rangle = lnN, and the giant component absorbs all nodes, so there are no isolated nodes or unconnected components. , . For sufficiently large p the giant component absorbs all nodes and components, hence . In the absence of isolated nodes the network becomes connected. The average degree at which this happens depends on as . Note that when we enter the connected regime the network is still relatively sparse, as for large N. The network turns into a
complete graph In the mathematical field of graph theory, a complete graph is a simple undirected graph in which every pair of distinct vertices is connected by a unique edge. A complete digraph is a directed graph in which every pair of distinct vertices i ...
only at . In summary, the random network model predicts that the emergence of a network is not a smooth, gradual process: The isolated nodes and tiny components observed for small \langle k \rangle collapse into a giant component through a phase.


Examples for occurrences in nature


Water-ice transition

Phase transition In physics, chemistry, and other related fields like biology, a phase transition (or phase change) is the physical process of transition between one state of a medium and another. Commonly the term is used to refer to changes among the basic Sta ...
s take place in matter, as it can be considered as a network of particles. When water is frozen, upon reaching 0 degree (the critical point) the crystalline structure of ice emerges according to the phase transitions of random networks: As cooling continues, each water molecule binds strongly to four others, forming the ice lattice, which is the emerging network.


Magnetic phase transition

Similarly, magnetic phase transition in
ferromagnetic Ferromagnetism is a property of certain materials (such as iron) that results in a significant, observable magnetic permeability, and in many cases, a significant magnetic coercivity, allowing the material to form a permanent magnet. Ferromagne ...
materials also follow the pattern of network evolution: Above a certain temperature,
spins The spins (as in having "the spins") is an adverse reaction of Substance intoxication, intoxication that causes a state of vertigo and nausea, causing one to feel as if "spinning out of control", especially when lying down. It is most commonly as ...
of individual atoms can point in two different directions. However, upon cooling the material down, upon reaching a certain critical temperature, spins start to point in the same direction, creating the
magnetic field A magnetic field (sometimes called B-field) is a physical field that describes the magnetic influence on moving electric charges, electric currents, and magnetic materials. A moving charge in a magnetic field experiences a force perpendicular ...
. The emergence of magnetic properties in the structure of the material resemble to the evolution of a random network.


Applications


Physics and chemistry

As we could see in the above examples, network theory applies to the structure of materials, therefore it is also applied in research related to materials and their properties in physics and chemistry. Particularly important areas are
polymer A polymer () is a chemical substance, substance or material that consists of very large molecules, or macromolecules, that are constituted by many repeat unit, repeating subunits derived from one or more species of monomers. Due to their br ...
s, gels, and other material development such as
cellulose Cellulose is an organic compound with the chemical formula, formula , a polysaccharide consisting of a linear chain of several hundred to many thousands of glycosidic bond, β(1→4) linked glucose, D-glucose units. Cellulose is an important s ...
with tunable properties.


Biology and medicine

Phase transitions are used in research related to the functioning of proteins or emergence of diabetes on the cell-level. Neuroscience also extensively makes use of the model of the evolution of networks as phase-transition occur in neuron-networks.


Network science, statistics and machine learning

Phase transition of a network is naturally a building block of more advanced models within its own discipline too. It comes back in research examining clustering and percolation in networks, or prediction of node properties.Zhang, P., Moore, C., & Zdeborová, L. (2014). Phase transitions in semisupervised clustering of sparse networks.


References

{{reflist Network theory Network topology