igraph (version 0.3.3)

measure.dynamics: Measuring the driving force in evolving networks

Description

These functions assume a simple evolving network model and measure the functional form of a so-called attractiveness function governing the evolution of the network.

Usage

measure.dynamics.idage (graph, start.vertex = 0, agebins = 300, iterations = 5, 
    significance = 0, estind = NULL, estage = NULL, number = FALSE, 
    time.window = NULL)
measure.dynamics.id(graph, start.vertex = 0, iterations = 5, significance = 0, 
    estind = NULL, estage = NULL, number = FALSE, time.window = NULL) 
measure.dynamics.d.d(graph, vtime, etime, iterations = 5,
    sd = TRUE, no = FALSE) 
measure.dynamics.citedcat.id.age(graph, categories, agebins = 300,
    iterations = 5, significance = 0, 
    number = FALSE, norm = c(1, 1, 1)) 
measure.dynamics.citingcat.id.age(graph, categories, agebins = 300,
    iterations = 5, significance = 0,  
    number = FALSE, norm = c(1, 1, 1))

Arguments

graph
The graph of which the evolution is quantified. It is assumed that the vertices were added in increasing order of vertex id.
start.vertex
agebins
Numeric constant, the number of bins to use for measuring aging.
iterations
Numeric constant, number of iterations to perform while calculating the attractiveness and the total attractiveness function.
significance
estind
estage
number
time.window
vtime
etime
sd
no
categories
norm

Value

  • TODO

Details

The functions should be considered as experimental, so no detailed documentation yet. Sorry.